Technical Papers Library
Below is an index of available technical papers, arranged by general topic. Within each topic area, introductory articles are listed first. (More articles can be found in back issues of our newsletter, Sawtooth Solutions.)
Sawtooth Software Products
- ACA Technical Paper
"Adaptive Conjoint Analysis" (ACA) is PC-based software for conjoint
(trade-off) analysis. The term "adaptive" refers to the fact that the
computer-administered interview is customized for each respondent. Data
are analyzed as the interview progresses, and we choose questions likely
to reveal the most about the respondent's values in the shortest time.
ACA is an excellent alternative to full-profile
conjoint when you have a large number of attributes.
This paper provides a description of the adaptive technique, including
technical details.
- ACA/HB Technical Paper
Hierarchical Bayes is a relatively new technique that can be used in
estimating part worths for conjoint analysis experiments. HB has been
described favorably in several recent journal articles. Its strongest
point of differentiation is its ability to provide estimates of
individual part worths given limited information from each individual.
It does this by "borrowing" information from other individuals.
This technical paper describes the intuition and math behind HB, including
results that suggest that ACA utilities computed using HB are generally
superior to those generated by the ACA system under OLS. ACA/HB utilities
generally produce better hit rates and more accurate share predictions
of holdout validation data. Furthermore, ACA/HB provides
a more theoretically sound way to combine information from ACA's priors
and pairs.
We at Sawtooth Software are not experts in Bayesian
data analysis. In producing this software we have been helped by several
sources. We have benefited particularly from the materials provided by
Professor Greg Allenby in connection with his tutorials at the American
Marketing Association's Advanced Research Techniques Forum.
- Advanced Simulation Module (ASM) Technical Paper
The Advanced Simulation Module (ASM) extends the capabilities of the standard
market simulator software for ACA, CBC, and CVA to enable product optimization
searches, based on the criteria of utility, share, purchase likelihood, revenue,
profit or cost minimization. Search routines include hill-climbing methods,
exhaustive search, and Genetic Algorithms. Product optimizations are well-suited
for finding optimal products considered alone, or relative to a set of competitors.
Cost information can be associated with attribute levels in the study.
With cost information, the analyst can perform profit maximization searches, or
can search for products that maximize some performance threshold relative to
a cost limit specified by the user.
- CBC Technical Paper
"Choice-Based Conjoint" Analysis (CBC) is a PC-based software for
conducting choice-based conjoint studies. The main characteristic
distinguishing choice-based conjoint analysis from other types is
that the respondent expresses preferences by choosing
concepts from sets of concepts, rather than by rating or ranking them.
This paper discusses the method of choice-based conjoint analysis from
a practitioner-oriented point of view, and describes Sawtooth
Software's CBC System for choice-based conjoint analysis in some
detail. It also provides suggestions about how to select a particular
conjoint method from the variety of those available, considering
characteristics of the research problem at hand.
- CBC Advanced Design Module Technical Paper
Some CBC projects do not fit the traditional mold (full-profile, common
attributes, limited attributes and levels). The Advanced Design Module
for CBC gives the researcher additional capabilities:
- Alternative-specific plans
- Partial-profile interviewing format
- Capacity extended to 30 attributes
- Capacity extended to 254 levels per attribute, and 100 concepts per task (CBC/Web only)
- Shelf-facing display (CBC/Web only)
This paper covers the intuition and quantitative concepts behind these
more advanced approaches. With the Advanced Design Module, researchers
are better equipped to handle a variety of challenging requests and modeling
opportunities.
- CBC Latent Class Technical Paper
The CBC Latent Class Module is an add-on system to the CBC
System for Choice-Based Conjoint.
Latent Class analysis is a technique for dividing respondents
into segments having similar preferences. Latent Class
simultaneously estimates utilities for
each segment and the probability that each respondent belongs to
each segment.
Latent Class can improve the quality of marketing simulations
over traditional aggregate logit modeling. It helps reduce IIA
(red bus/blue bus) problems. This module also
lets you fit linear terms to quantitative attributes.
- CBC/HB Technical Paper
Hierarchical Bayes is a relatively new technique for computing individual-
level part worths from CBC data. HB has been described favorably in
numerous journal articles. Its strongest point of differentiation
is its ability to provide estimates of individual part worths given only
a few choices by each individual. It does this by "borrowing" information
from other individuals.
This technical paper describes the intuition and math behind HB, including
results that suggest that HB is generally superior relative
to aggregate approaches for estimating individual's choices and aggregate
share predictions. We at Sawtooth Software are not experts in Bayesian
data analysis. In producing this software we have been helped by several
sources. We have benefited particularly from the materials provided by
Professor Greg Allenby in connection with his tutorials at the American
Marketing Association's Advanced Research Techniques Forum.
- CCEA Technical Paper
"Convergent Cluster & Ensemble Analysis" (CCEA) is software for doing
cluster and cluster ensemble analysis. CCEA uses k-means as its
standard cluster algorithm. However, the newer Ensemble Analysis included
in the software is shown
to produce better results for artificial datasets generated with known
group membership. The procedure for the ensemble analysis is described
in detail. Comparisons to k-means as provided by our previous CCA software
are shown.
- CPM Technical Paper
"Composite Product Mapping" (CPM) in many ways can be considered the successor
to the APM system. It can generate the discriminant-based perceptual
maps that APM does. In addition, two new "composite" mapping techniques
are included. These new composite techniques create maps using both
perceptual and preference data. The preference data can come from
paired comparison judgments between brands (products or objects), or from conjoint part
worths. Since composite product maps are more closely linked to
preferences, a "density of demand" plot is possible, overlaying on
the perceptual space colors ranging from light to dark representing
various degrees of relative demand.
In contrast to the APM system, CPM does not include a module for
collecting data. Data can come from paper-and-pencil or computerized
surveys, so long as they are appropriately formatted in an ASCII file.
CPM includes a Ci3 template for collecting data with the Ci3 System.
If the Ci3 template is used, CPM can read the data directly from the
Ci3 data file. The CPM System includes a Windows-based Plot module for
creating presentation-quality maps.
- CVA Technical Paper
"Conjoint Value Analysis" (CVA) is a PC-based software system for full-profile conjoint
analysis. CVA fits within our SMRT suite of conjoint analysis tools.
CVA interviews can be conducted using the software's built-in Windows interviewing program
or data can be gathered using a paper-and-pencil approach or through a Web-based
survey administered by our SSI Web System. CVA can be
used to manage all aspects of card-sort (single-concept) or pairwise comparison
conjoint studies. This paper provides a description and technical details of CVA.
- CVA/HB Technical Paper
Hierarchical Bayes is a relatively new technique for computing individual- level
part worths from conjoint data. HB has been described favorably in several recent
journal articles. Its strongest point of differentiation is its ability to
provide estimates of individual part worths given limited information from each
individual. It does this by "borrowing" information from other individuals.
This technical paper describes the functionality of the software and math
behind HB. We at Sawtooth Software are not experts in Bayesian data analysis.
In producing this software we have been helped by several sources. We have
benefited particularly from the materials provided by Professor Greg Allenby
in connection with his tutorials at the American Marketing Association's
Advanced Research Techniques Forum.
- HB-Reg Technical Paper
Hierarchical Bayes is a relatively new technique for computing individual-
level estimates of regression coefficients or part worths.
HB has been described favorably in several recent journal articles.
Its strongest point of differentiation is its ability to provide
estimates of individual parameters given only a few observations
by each individual. It does this by "borrowing" information
from other individuals.
HB-Reg is a generalized software program for running Regression-based
HB. The user provides the data in an ASCII file.
Potential uses for HB-Reg include traditional
ratings-based conjoint experiments, customer satisfaction studies, or
price elasticity measurement from scanner data.
This technical paper describes the intuition and math behind HB,
including results that suggest that HB is generally superior relative
to aggregate approaches for estimating individual's regression
coefficients or part worths for conjoint experiments. We at Sawtooth Software
are not experts in Bayesian
data analysis. In producing this software we have been helped by several
sources. We have benefited particularly from the materials provided by
Professor Greg Allenby in connection with his tutorials at the American
Marketing Association's Advanced Research Techniques Forum.
- MaxDiff/Web Technical Paper
This paper describes the technical procedures used in the MaxDiff/Web System.
MaxDiff (best-worst) scaling is a trade-off method for measuring the importance or preference for multiple items, such as brands, product features, political platforms, advertising claims, etc. Any time you are considering using a rating scale, ranking scale, or constant sum scale for multiple items, you can consider using MaxDiff.
The MaxDiff methodology, originally invented by researcher and academic Jordan Louviere, has gained in popularity over the last five years. Papers on MaxDiff have won "best presentation" awards at recent ESOMAR and Sawtooth Software research conferences. It has many similarities to, but is distinctively different, from conjoint methodology and is appropriate for a wider range of research opportunities.
Sawtooth Software’s MaxDiff/Web system may be used for conducting web-based, CAPI, or paper-based MaxDiff studies. The software also supports asking the "best" half of the question only (not requiring respondents to identify the "worst" item in each set). The software may also be used for Method of Paired Comparisons research. Individual-level estimation of item scores employs Sawtooth Software’s popular hierarchical Bayes (HB) engine. Results may also be exported to Sawtooth Software’s Latent Class system for segmentation analysis.
General Conjoint Analysis
- Understanding Conjoint Analysis in 15 Minutes
This article is for those wanting a quick and understandable
introduction to conjoint analysis. The basics of conjoint measurement are
demonstrated using an example about optimizing golf balls in terms of price,
durability, and performance.
- Managerial Overview of Conjoint Analysis
Conjoint analysis has become the most popular and useful way to measure respondents’ preferences for simple to complex offerings and predict market choices. This article is taken from Chapter 1 of Getting Started with Conjoint Analysis, a book written by Sawtooth Software president Bryan Orme. It provides a non-technical managerial overview of the technique. It describes the history of the method, the various flavors, its practical uses, and recent developments that have made conjoint analysis even more powerful
- Helping Managers Understand the Value of Conjoint Analysis
This paper (a chapter from the book Getting Started with Conjoint Analysis) illustrates how conjoint can be used to provide
managers strategic marketing information that is intuitive
and actionable. It explains how Choice-Based Conjoint (CBC)
can be used to measure brand equity and determine brand
sensitivity. The article focuses on how to get managers
to "buy in" to conjoint, and some pitfalls to avoid when
presenting conjoint data.
- Which Conjoint Method Should I Use?
Sawtooth Software offers three different conjoint packages: ACA, CBC and CVA.
This paper discusses the main differences between these approaches and offers
suggestions regarding applicability to different research situations. The
CBC advanced modules, ICE (Individual Choice Estimation) and Latent Class are
also discussed.
- Interpreting Conjoint Analysis Data
Covers the essentials for interpreting conjoint analysis data, including part worths, importances, shares of preference and "counting"
analysis. The framework for interpreting results is developed from formal definitions of scaled data: Nominal, Ordinal,
Interval, and Ratio. Common errors in interpreting conjoint analysis are highlighted.
- A Short History of Conjoint Analysis
Conjoint analysis has been a great success story for the marketing research industry. This paper
outlines its development from the late 1960s through the early 2000s. The earliest conjoint analysis
approaches were based on either full-profile card sort, or Johnson's tradeoff matrix. Later,
Adaptive Conjoint Analysis and discrete choice (CBC) applications dominated. The use of CBC
accelerated in the 1990s due largely to the introduction of CBC software in 1993 and the
development of HB methods in the mid to late 1990s. The author states: "Much of the recent
research and development in conjoint analysis has focused on doing
more with less: stretching the research dollar using IT-based initiatives, reducing the
number of questions required of any one respondent with more efficient design plans and
HB (“data borrowing”) estimation, and reducing the complexity of conjoint questions
using partial-profile designs." Since 2000, there has been increased interest in the
use of optimization routines, greater realism (including "virtual shopping" environments)
and real-time adaptive CBC routines.
- Analysis of Traditional Conjoint Using Excel: An Introductory Example
This article conveys the basics of conjoint utility estimation using a
common software tool: Microsoft's Excel. It covers dummy-coding and
experimental design issues for full-profile conjoint analysis (single
concept). When using Excel to perform the steps described in this article,
you'll need Excel's Analysis Toolpak add-in with Regression Analysis.
- Including Holdout Choice Tasks in Conjoint Studies
It is advisable to include holdout choice tasks in conjoint interviews
even though they may not appear to be needed for the main purpose of the
study. This paper, originally published in Sawtooth Solutions, Spring 1997,
lists the benefits of holdout choices and provides general guidance on
how to construct them.
- Conducting Full-Profile Conjoint Analysis over the Internet
The Internet is fast becoming a viable way to conduct market research surveys
for many situations. This article reports on a Full-Profile conjoint experiment
conducted over the Internet. Single-Concept and Pairwise approaches are compared
in terms of conjoint importances, utilities and reliability for predicting holdout
choice concepts. Very little difference is found in any of the measures,
suggesting that both approaches work well in practice for computerized
Full-Profile conjoint.
- Sample Size Issues for Conjoint Analysis Studies
Sample size considerations for conjoint analysis are
often quite different from those for traditional market research surveys.
This paper covers such topics as sampling error versus measurement error,
confidence intervals, sampling for small populations, and how the choice of
market simulation method affects the precision of results. The differences
between ACA, traditional conjoint (CVA), and CBC are discussed with
respect to sample size decisions. Finally, the paper reviews
sample sizes commonly used by conjoint practitioners, and provides some rules-of-thumb
and general recommendations.
- Assessing the Monetary Value of Attribute Levels with Conjoint Analysis: Warnings and Suggestions
Because conjoint utilities are often difficult for non-researchers to
understand, researchers sometimes try to convert those to monetary
equivalents. This practice is usually a poor use of conjoint analysis,
and often misleading. The typical approaches ignore competitive factors
and base the analysis on the average respondent. The author suggests that the worth of adding
incremental features to products can be better determined through competitive
market simulation scenarios.
- Commercial Use of Conjoint Analysis in Europe: Results and Critical Reflections
This paper reports on an industry survey of 159 commercial research agencies in Europe
regarding their use of conjoint analysis during the period July 1986 through
June 1991. ACA is shown to be the most popular conjoint software in Europe. The
authors (Wittink, Vriens, and Burhenne) provide an excellent discussion of
general conjoint issues, and provide insight regarding the industry's
adoption of this popular technique.
- Assessing Unacceptable Levels in Conjoint Analysis
This 1987 article by Norein Klein is often cited in the literature. Abstract:
Some adaptive conjoint analysis methods reduce the attribute space by allowing the respondent to state
which attribute levels are completely unacceptable. Utilities are not estimated for these levels, and it
is assumed in later choice simulations that respondents would never choose alternatives that possess
these levels. This procedure allows a more efficient estimation of conjoint utilities, but its value
depends on whether the judgments of acceptability are consistent with respondents' behavior in later choices.
In the study reported here, 15 percent of all choices contained an attribute level previously designated unacceptable,
indicating some inconsistency between the judgments and choices. However, the overall accuracy of choice
predictions was unaffected by the initial elimination of alternatives with unacceptable levels. The
practical implications of these findings, and the relationship of judgments of acceptability to decision
strategies are discussed.
- Assessing the Validity of Conjoint Analysis--Continued
Despite over 20 years of conjoint research and hundreds of methodological papers, very little has
been published in the way of formal tests of whether conjoint really works in predicting
real-world purchase decisions. The authors (Orme, Alpert and Christensen) argue that
the holdouts typically used in conjoint validation studies are not very realistic, especially for
high-involvement categories. The authors present results from a small pilot study. Respondents
completed ACA, full-profile card sort, regular holdout choices and a "Super Holdout Task." The
Super Holdout Task took 10 minutes and was an attempt to create a more realistic holdout. The
authors compare results from the two types of holdout tasks and detect no significant differences.
The authors find no significant difference in holdout hit rates for the Super Holdout Task for
ACA and full-profile, though full-profile maintains a small edge. Full profile and CBC
importances are shown to be steeper than ACA importances. The authors call for more realistic
holdout tasks and urge those who have the resources to publish real-world validations of conjoint
analysis. Originally presented at the 1997 Sawtooth Software Conference.
- What We Have Learned from 20 Years of Conjoint Research: When to Use Self-Explicated, Graded Pairs, Full Profiles or Choice Experiments
Joel Huber, Duke University, points out that respondents
adopt different strategies for answering different types of conjoint questions. Researchers should
understand these simplification strategies and match the right method to the context of actual
marketplace decisions. Huber summarizes the strengths of the methods as follows:
- Self-explicated models are best in the case of many attributes, where expectations
about levels and associations among attributes are stable. They work better in predicting
decisions about independent alternatives than for competitive contexts.
- Paired comparisons are most appropriate for modeling markets in which alternatives
are explicitly compared with one another, approximating a deeper search of a broad range of
attributes, and where within-attribute value steps are smooth and approximately linear.
- Full-Profile works best when it is desirable to abstract from short run beliefs, when
market choices reflect simplification toward the most important variables, and the decision focus
is more within alternative rather than explicitly made using side-by-side comparisons between
options.
- Choice is most appropriate for simulating immediate response to competitive
offerings, when decisions are made based on relatively few attributes with substantial aversion to
the worst levels of each attribute, and when consumers make decisions based on comparative
differences among attributes.
In contrast to what is becoming popular agreement regarding the superiority of choices, Huber
cautions that choices may not always work better than more traditional approaches.
(Originally published in our 1997 Sawtooth Software Proceedings.)
- Three Ways to Treat Overall Price in Conjoint Analysis
Three ways to treat overall price in conjoint analysis experiments are discussed: traditional approach, conditional price, and continuous/summed price.
The traditional pricing method treats price as a separate attribute with a fixed set of price points that apply to all products. Prices are varied independently
of the features. The problem with treating price in this traditional manner is that products with the best features are sometimes shown at the lowest
prices (and products with the worst features are sometimes shown at the highest prices). This can lead to dominated choices and lack of realism.
With conditional pricing, incremental amounts are added to the price for premium brands or features, so enhanced products are generally shown at higher
prices. One uses a look-up table to determine actual prices shown in the questionnaire. Currently, Sawtooth Software's CBC software allows price to
be conditional on up to 3 other attributes.
Continuous/Summed pricing generalizes the idea of conditional prices (beyond the software limitations of just three attributes). Also, it estimates the
effect of overall price as a linear coefficient, rather than as a part-worth utility function. After summing the prices across the feature components,
price is varied by an additional random component specified by the researcher. One of the challenges of continuous pricing is that the
price variable is moderately to strongly correlated with other attributes, depending on the design. A simulation study investigating the stability of
the price coefficient within summed pricing is shown. The continuous pricing option is currently available as a standard option in Sawtooth Software's
tools, though a power user could implement it with additional work. Continuous pricing will be a part of the forthcoming Adaptive CBC software.
- Conjoint Analysis: How We Got Here and Where We Are--An Update
Joel Huber of Duke University provides an insightful discussion on the history
and theoretical underpinnings of conjoint analysis. He traces its development from
its roots in psychometrics to its enthusiastic adoption by the market research community.
The original paper is quite dated (originally published in our 1987 Sawtooth
Software Conference Proceedings), but Joel Huber and Bryan Orme have added additional
footnoted commentary from a 2004 perspective. This paper continues to be an
excellent resource for today's conjoint practitioners.
- The Number of Levels Effect in Conjoint: Where Does It Come From, and Can It Be Eliminated?
The Number Of Levels effect is this: attributes with more levels in general
tend to achieve higher importance than attributes defined on fewer levels. The
authors (Wittink, Huber, Zandan and Johnson) present research which seeks to
identify the cause. Behavioral versus algorithmic explanations are investigated.
Their findings support the algorithmic hypothesis.
The authors conclude that ACA is less susceptible to the number of levels effect
than traditional full-profile conjoint methods in part due to the utility balance
of the graded pairs.
CBC-Related Papers
- Using Choice-Based Conjoint To Assess Brand Strength and Price Sensitivity
In this article (originally published in Sawtooth News), Jon Pinnell and
Pam Olsen of IntelliQuest present a case history of how Choice-Based Conjoint (CBC) was
used successfully in pricing research conducted for a technology client. Derivation of demand
curves and Price Elasticity of Demand is discussed. The Disk-By-Mail approach is also
discussed as a viable way of collecting market research data.
- Using Conjoint Analysis in Pricing Studies: Is One Price Variable Enough?
This paper discusses a real-world case study using Choice-Based Conjoint.
The Choice-Based Conjoint approach is shown to be a powerful method
for uncovering brand x price interactions. The authors show that
neglecting that important interaction would have been a bad assumption
for their research study. This paper was originally presented at the ART
Forum and is an excellent paper for researchers interested
in Discrete Choice Modeling.
- Getting the Most from CBC
This paper discusses successful strategies for using CBC properly, and warns
against common pitfalls. Topics include: using prohibitions, determining
number of attribute levels to include, sample size, precision of estimates,
counting analysis versus logit analysis, whether to include "None" in the questionnaire and in analysis,
calibrating CBC results to market shares, and IIA and the red bus/blue
bus problem.
- The Benefits of Accounting for Respondent Heterogeneity in Choice Modeling
This paper demonstrates why recognizing differences between segments or
respondents results in more predictive and valid choice simulations than
simple aggregate models. Latent Class and ICE solutions are shown to better handle
the traditional "Red bus/Blue bus" problem, cross-elasticities and interaction
effects than the equivalent main-effects model using aggregate logit. Though
cross-effects and IIA violations can be modeled in the aggregate, it requires
modeling expertise and software other than CBC. The author concludes that it is
beneficial to start with underlying utilities that are
less susceptible to the "Red bus/Blue bus" problem.
- Comment on Huber: Practical Suggestions for CBC Studies
This paper, by practitioner Jon Pinnell, was first delivered at the 2004 Sawtooth Software Conference,
as a comment on Joel Huber's paper (also available for download within this library) entitled "Conjoint
Analysis: How We Got Here and Where We Are--An Update." Jon gives many practical pieces of
advice based on his years as a researcher using CBC analysis. His suggestions include:
use choice-based rather than ratings-based tasks; use randomized rather than fixed designs;
use more alternatives per task; use first-choices rather than allocations or full ranks;
use HB; and to be cautious with partial-profile designs.
This article is a good review of best practice, with suggestions based on numerous methodological
and commercial CBC studies.
- Special Features of CBC Software for Packaged Goods and Beverage Research
CBC is a popular tool for studying brand and price effects for packaged goods and beverages. Under the proper conditions,
it can produce quite accurate predictions of buyer behavior. The purpose of this document is to discuss some of the common approaches (and
mistakes made) with past versions of our CBC software, and to point out some new capabilities available with the latest version of the Advanced Design Module for
CBC/Web.
Common mistakes made were based on excessive use of level prohibitions within CBC software. Also, given
the previous limitations of no more than 15 levels for brand and 16 concepts per choice task, it was difficult for researchers to represent the variety of unique brands
available to buyers. The new version of CBC/Web Advanced Design Module offers up to 100 levels per attribute and 100 concepts
per task, and supports a realistic "Shelf-Display" where the choice tasks look like shelves in a store,
with products resting on the shelves.
- Predicting Actual Sales with CBC: How Capturing Heterogeneity Improves Results
The authors (Orme and Heft) provide evidence that, under proper conditions, conjoint analysis
can accurately predict what buyers do in the real world. Their results are
based on CBC interviews conducted in grocery stores, where the CBC results
were used to predict actual sales for three product categories of packaged goods
from those same stores with good success.
A second purpose of the paper is to show that
capturing heterogeneity (reflecting differences in preference between groups
or individuals) with Latent Class or ICE can improve predictions. Many complex effects (substitution,
cross-effects and interactions) can be accounted for with disaggregate Main
Effect models. The authors note that complex terms can be built into large
aggregate logit models, but that such models risk overfitting. Moreover,
that approach places a great deal of responsibility on the analyst to choose
the right combination of terms. This paper was originally presented at
the 1999 Sawtooth Software Conference.
- How Many Questions Should You Ask in Choice-Based Conjoint Studies?
When planning a choice-based conjoint study, one must decide how many
choice tasks to give each respondent. Too many may produce biased or
noisy results, and too few will reduce precision. We re-analyzed data
from 21 commercial studies, conducted in several countries and
languages, with widely varying product categories, to see how results
depend on the number of tasks respondents are given.
[The paper was awarded "Best Presentation" at the ART Forum at Beaver Creek in June 1996.]
- Extensions to the Analysis of Choice Studies
In this paper (originally published in our 1997 Sawtooth Software Conference Proceedings)
Tom Pilon of TRAC, Inc. presents some
additional types of analysis that can be done using standard CBC data. He reports results from
a beer study, and shows how cross-elasticities for brands can be calculated (by regressing the
log of choice volume on the log of price) and incorporated into a market simulator.
Pilon argues that the standard logit simulator which assumes constant cross-elasticity across
brands was not entirely realistic for the beer market. A cross-elasticity simulator lets brands that
compete closely (perceived as close substitutes) take relatively more share from one another as a
result of price changes than from brands which are not perceived to be as substitutable. Pilon also
demonstrates how to convert a cross-elasticity matrix into a "brand similarities matrix" for use in
an MDS perceptual map. Brands which compete closely with one another are situated close
to one another on the map.
- Achieving Individual-Level Predictions from CBC Data: Comparing ICE and Hierarchical Bayes
This article is adapted from a presentation given at the 1998 A/R/T Forum
by Joel Huber, Duke University. Huber compares three different methods
for accounting for heterogeneity in CBC modeling: Hierarchical Bayes (HB),
Latent Class, and ICE (Individual Choice Estimation). Three data sets
are used to compare the merits of these approaches. HB and ICE are
shown to outperform Latent Class in all aspects.
He concludes: "The
important result is that although HB is more theoretically elegant than
ICE, our experience suggests that both methods work equally well in
practice." Latent Class is shown to provide estimates of aggregate shares
nearly as accurate as HB and ICE, but "Latent Class, for its part, does a
poor job of predicting individual choices unless its weights are allowed
to be negative, as they are with ICE."
- Learning Effects in Preference Tasks: Choice-Based Versus Standard Conjoint
Huber, Wittink, Johnson and Miller report on a methodological study which featured
an ACA interview between two short Choice-Based Conjoint modules. The study
sought to discover if 1) the Choice-Based Conjoint utilities shifted when interrupted by ACA;
2)
if the results from ACA were different from Choice-Based Conjoint; and 3) if
ACA can be modified to approximate the Choice-Based results. They conclude that the
answer to all three questions is yes. The authors suggest that ACA may be better
at predicting how buyers would choose given sufficient information and time,
whereas Choice-Based Conjoint results portray customers who are primarily motivated
by brand name and price, and who have little time to make a decision. Originally
published in 1992 Sawtooth Conference Proceedings.
Adaptive CBC Papers
- A New Approach to Adaptive CBC
In this paper, Rich Johnson and Bryan Orme from Sawtooth Software take an entirely new approach from their previous attempts at adaptive CBC.
The new approach mimics the purchase process of formulating a consideration set using non-compensatory heuristics (such as “must have” or
“must avoid” features), followed by a more careful tradeoff of alternatives within the consideration set using compensatory rules.
Adaptive CBC involves three core stages: 1) Build-Your-Own (BYO) Stage, 2) Screening Stage, and 3) Choice Tasks Stage. Rich and Bryan
conducted a split-sample experiment comparing the new approach to traditional CBC. They found that respondents liked the adaptive survey
more and felt it was more realistic--even though it took about double the time as traditional CBC. Furthermore, part-worths developed
from ACBC were more predictive of holdout tasks than traditional CBC, despite the methods bias in favor of CBC for predicting the
CBC-looking holdouts.
- A Perspective on Adaptive CBC (What Can We Expect from Respondents?)
Rich Johnson, a key person in the development of conjoint analysis methods over the last 30 years, gives his perspective on Adaptive CBC (ACBC).
What role does it play in the evolution of conjoint methods? What about the respondent burden? What about respondent engagement? What strengths
does ACBC have over other approaches? This short essay contains pearls of wisdom.
- Testing Adaptive CBC: Shorter Questionnaires and BYO vs. “Most Likelies”
Bryan Orme and Rich Johnson report on another methodological test of their Adaptive CBC procedure (comparing it to standard non-adaptive
CBC). This time, they study home purchases
and employ shorter questionnaires, to see if similar results can be achieved with substantially less information. They use a slightly improved
design algorithm as compared to their previous test reported in their 2007 article, "A New Approach to Adaptive CBC". Also, they test the
use of a "most likelies" question rather than the standard BYO question.
Adaptive CBC again is shown to have greater internal predictive validity than standard CBC. Reducing the length of the questionnaires
doesn't seem to reduce the predictive ability of Adaptive CBC for this test, though the authors caution that some information must have
been lost. The "most likelies" option is shown to be a viable approach, though Orme and Johnson caution that the utilities are mis-informed
by at least a small degree when using this approach.
Market Simulations
- Introduction to Market Simulators for Conjoint Analysis
The Market Simulator is usually considered the most important tool resulting from a conjoint project. The
simulator is used to convert raw conjoint (part-worth utility) data into something much more managerially
useful: simulated market choices. Products can be introduced within a simulated market scenario and the
simulator reports the percent of respondents projected to choose each. A market simulator lets an analyst
or manager conduct what-if games to investigate issues such as new product design, product positioning,
and pricing strategy.
This paper covers the topic from an intuitive and strategic standpoint. It explains why interpreting average
part worths or importances falls short, and the additional benefits of conducting appropriate simulations.
Three common strategic questions that simulators can respond to are listed, and examples are provided
using hypothetical data. The examples include new product introduction, repositioning existing products,
price sensitivity measurement, and line extensions.
- Dealing with Product Similarity in Conjoint Simulations
Conjoint simulators have been very useful for transforming part-worth
utility values into the more concrete and managerially appealing
shares of preference. Such simulators let the analyst play "What-If"
games with real market scenarios, such as estimating the impact of
pricing changes, product design modifications, or the effect of a
line extension. However, traditional conjoint simulators based on the
BTL or logit model have suffered from IIA problems. A common example
is that of the red bus company that repaints half of its fleet blue and
nearly doubles its predicted market share. Similar or identical products
placed in IIA simulators tend to result in "share inflation." The first
choice model, while not susceptible to IIA difficulties and unrealistic
share inflation for similar offerings, typically produces
shares of preference that are too extreme relative to real world behavior.
Also, first choice models are inappropriate for use with logit or latent
class models.
In the family of Sawtooth Software products, a Model 3 "Correction for
Product Similarity" has been offered to deal with problems stemming from
product similarity. However, this model is often too
simplistic to accurately reflect real world behavior. The authors propose
a new method called "Randomized First Choice (RFC)" for tuning market
simulators to real world behavior. RFC adds random variation to both
attribute part-worths and to the product utility, and simulates respondent
choices under the first choice rule. RFC can be tuned to reflect any
similar product substitution behavior between the extreme first choice
rule and the IIA-grounded logit rule. RFC is shown to improve predictions
of holdout choice tasks (reflecting severe differences in product similarity)
for logit, latent class, ICE and hierarchical Bayes. The greatest gains
were for the aggregate methods. The disaggregate methods, while less in
need of corrections for product similarity, still benefit from RFC.
- External Effect Adjustments in Conjoint Analysis
Market simulations from conjoint data often do not closely predict actual market shares. That is to be expected, as the model doesn't incorporate many real-world factors that critically affect market shares (such as distribution, awareness, time on the market, etc.). The authors argue that the best approach is to understand (and explain to others) the assumptions within the conjoint model, and to use the market simulator as-is-- focusing on its strengths, rather than making it do something it often cannot (predict market shares). Researchers over the years have (for better or worse) adjusted shares of preference to match known targets or market shares. The Sawtooth Software simulator offers an "external effect" correction to do this. However, it remains a "dangerous" practice, and the documentation warns against its use. The authors investigate how different methods for adjusting shares affect the fundamental properties of the market simulator, in terms of substitution effects, elasticities, and cross-elasticities. They find that the method used in the Sawtooth Software simulation tool has some undesirable properties. A method for adjusting part-worths at the individual level is also tested, and shown to perform better. Perhaps the most valuable section of this paper (and a very defensible adjustment) is the section dealing with corrections for distribution.
- Comparing Hierarchical Bayes Draws and Randomized First Choice for Conjoint Simulations
Randomized First Choice is a new market simulation technique that shows promise
for reducing IIA problems, especially when using aggregate utilities. It
combines the strengths of the first choice rule and the share of preference
(logit) rule.
Conjoint simulators have traditionally used part worths as point estimates of
preference. Most recently, Hierarchical Bayes (HB) draws and Randomized
First Choice (RFC) reflect uncertainty (error distributions) about part
worths. RFC makes simplifying assumptions. HB draws, though theoretically
more complete, have some unexpected properties. The authors (Orme and Baker)
find that RFC with point estimates performs slightly better than using HB draws
during simulations. Using RFC on point estimates avoids having to use the
enormous HB draws files. The authors present two reasons why HB draws did
not perform as well: a reverse number of levels effect, and an
excluded levels effect. This paper was delivered at the 2000
Sawtooth Software Conference.
Design of Conjoint Experiments
- An Overview and Comparison of Design Strategies for Choice-Based Conjoint Analysis
This paper compares four design strategies for choice-based experiments:
catalog-based designs for full-profile experiments, recipe-based designs
for partial profile experiments, computer optimized designs using SAS OPTEX
software; and randomized
designs using CBC software. The authors (Chrzan and Orme) compare these
strategies in terms of design efficiency and their ability to capture
particular effects (main, cross- and alternative-specific effects, and
interactions).
CBC software is found to create optimal or near-optimal designs in all cases,
with the exception of designs in which many more first-order interactions are
modeled relative to main effects. SAS OPTEX software is shown to provide
optimal or near-optimal designs in all cases for which it is applicable. For main-effect only designs,
minimal level overlap strategies are favored. For higher-order effects, level
overlap within tasks is desirable. A special case is demonstrated in which
carefully chosen prohibitions between attribute levels can actually improve
the efficiency of designs. D-efficiency computation using CBC and SPSS software
is detailed in the appendix. This paper was voted "Most Valuable Presentation"
at the 2000 Sawtooth Software Conference.
- Efficient Experimental Designs Using Computerized Searches
This paper (presented at our 1997 Conference) by Warren Kuhfeld of SAS
Institute is a good overview of design principles for traditional conjoint.
Kuhfeld introduces the concept of design efficiency and argues that
orthogonality in conjoint experiments was generally required in days when
computers were not widely available. If an
orthogonal design was used, relatively simple formulas were
available for hand or calculator ANOVA computations. Today, general linear
models such as OLS do not require orthogonality for the unbiased estimation
of effects.
Warren explains the principles of orthogonality and balance, introduces the
measure of D-efficiency, and compares two computerized search routines for
finding efficient experimental designs: SAS's PROC OPTEX procedure, and
Sawtooth Software's CVA designer. For the size
of designs commonly used in conjoint experiments, Warren found the CVA
routine to find designs about 97% as efficient as OPTEX, but that CVA's
designs tended to be more balanced. He also found CVA easier to use than
OPTEX. Warren concluded: "For small problems like you would typically
encounter in a full-profile conjoint study, CVA seems to do an excellent job.
However, for larger and more difficult problems, it often fails to find more
efficient designs that can be found with PROC OPTEX."
Clustering and Cluster Ensemble Analysis
- Political Landscape 2008: Segmentation Using MaxDiff and Cluster Ensemble Analysis
This article provides a case study regarding how MaxDiff and Cluster Ensemble analysis can be used to segment a population. Sawtooth Software conducted an online study among US
respondents just prior to the 2008 presidential election between John McCain and Barack Obama.
The 2008 Political Landscape study measured what policy positions would make people most and least want to vote for a US presidential candidate. We studied 25 different policy positions,
including such items as:
- Ensure the long-term health of Social Security
- Bring the troops home from Iraq
- Restrict carbon emissions to reduce global warming
- Reduce the federal deficit
We used MaxDiff (best-worst) scaling to measure the influence of these items on respondents’ preference for a presidential candidate. And, of course, democrats and republicans have different
priorities when it comes to policies and positions.
Following estimation of individual-level scores from MaxDiff, we used our CCEA (Convergent Cluster & Ensemble Analysis) software to find segments of respondents that had similar preferences.
MaxDiff (Best/Worst) Scaling
- Maximum Difference Scaling: Improved Measures of Importance and Preference for Segmentation
Maximum Difference (MaxDiff, or best/worst) scaling is a relatively new technique for measuring the importance or preference
of multiple items. In MaxDiff tasks, respondents see sets of items (typically 4 to 6). In each set, respondents indicate which item is
most important (preferred) and least important (preferred). Steve Cohen describes the methodology and presents results for a methodological study comparing
MaxDiff measurement with monadic ratings and paired comparisons, and also a case study focusing on using MaxDiff for
segmentation work. MaxDiff is shown to provide results that have greater between-item and between-respondent discrimination,
and greater predictive accuracy than either monadic ratings or paired comparisons. Steve won the "best presentation" award
with this paper at the 2003 Sawtooth Software Conference.
- The Options Pricing Model: An Application of Best-Worst Measurement
This article offers a case study demonstrating how best/worst scaling may be used for estimating
the price sensitivity of automobile buyers to different car options, such as warranty, anti-lock brakes,
and keyless entry. Using best/worst scaling, the author (Keith Chrzan), shows how price sensitivity
curves may be developed for each car option, presented on a common scale. Chrzan contrasts the best/worst
approach with conjoint analysis, and explains the benefits of using best/worst for this particular
application rather than conjoint analysis. The results validate closely
to self-reported past purchase behavior for options on the most recently purchased car.
Chrzan provides some background on best/worst, and describes how Sawtooth Software's latent class
and HB software may be used during analysis. This paper was voted "best presentation" at the 2004 Sawtooth Software Conference.
- Adaptive Maximum Difference Scaling
The author (Orme) presents results from two studies testing a new procedure called Adaptive MaxDiff Scaling. Rather than focus equal attention on estimating respondents' preferences (or importances) for best AND worst items, A-MaxDiff focuses attention on estimating best/most important items with greater precision. The interview adapts to each respondent, learning from prior responses. Items marked "worst" are discarded from further consideration. The questionnaire proceeds in stages. In the first stage, K items are shown per set. In each subsequent stage, K-1 items are shown per set, until the respondent is doing paired comparisons among the surviving (most preferred) items. Later tasks reflect increased utility balance. The results show better hit rates for "best" items in holdouts relative to standard MaxDiff. Average population parameters are essentially identical between standard and adaptive forms of MaxDiff. Respondents take slightly less time to complete the adaptive survey, and they perceive it to be more enjoyable and less monotonous than standard MaxDiff. Orme argues that A-MaxDiff should be especially preferred when simulation methods such as TURF are used with MaxDiff data. The main drawback is decreased precision of estimates for "worst" items.
- Testing for the Optimal Number of Attributes in MaxDiff Questions
The authors investigate how the number of items per MaxDiff set affects dropout rates, survey length, positional bias, parameter equivalence, and predictive validity. Three commercial studies are analyzed, where the number of items per set varied from 3 items/set to 8 items/set. The number of items/set has the most influence on task length, with respondents taking significantly longer to complete 8 items/set rather than 3 items/set. Statistically significant differences among the parameters were found, but the authors note that the overall results would lead to similar managerial decisions. The predictive validity tests "hint that 3 items per question may produce slightly worse predictions than questions with more items." They conclude: "Given the slight evidence of poorer hit rates and poorer out-of-sample for 3 items per question we recommend using 4 or 5 items per question in maxdiff experiments."
- MaxDiff Experiment Designer
This document describes a software package from Sawtooth Software for designing MaxDiff (best/worst) experiments. It also describes the dummy coding procedure for estimating effects from MaxDiff data, as may be applied within Sawtooth Software’s Latent Class or HB software systems.
- Accuracy of HB Estimation in MaxDiff Experiments
This paper communicates results of a Monte Carlo simulation study on how the precision of
estimates for MaxDiff (best/worst) experiments is affected by:
- Number of items presented per set,
- Number of sets presented to each respondent,
- Number of items in the overall study.
Results show that it may not be useful to ask more than about 5 items per set. The data
also suggest that displaying each item 3 or more times per respondent works well for
obtaining reasonably precise individual-level estimates with HB. Asking more tasks, such
that the number of exposures per item is increased well beyond 3, seems to offer significant
benefit, provided respondents don't become fatigued and provide data of reduced quality..
Hierarchical Bayes Estimation
- Hierarchical Bayes: Why All the Attention?
This paper was originally published in the March 2000 Quirk's Marketing
Research Review. HB has been receiving a lot of attention lately. Until
recently, desktop PCs weren't powerful enough to handle typical data sets
and commercial software wasn't available. Now HB is accessible to mainstream
market researchers. HB is receiving so much attention because it
consistently matches or beats traditional OLS estimation for
individual-level parameters, and can estimate individual-level models for
choice-based conjoint (CBC) data. Traditional aggregation methods confound
heterogeneity with noise. By modeling the heterogeneity in the data, HB
can achieve more precise estimates. This usually leads to more accurate models,
whether the researcher is interested in aggregate or individual-level
predictions. This paper gives examples of how HB can be applied to
traditional regression-based problems (like customer satisfaction data sets),
ACA data or choice-based conjoint (CBC). It explains why HB is beneficial
for each of those applications.
- Understanding HB: An Intuitive Approach
In this paper, Rich Johnson provides an intuitive example to explain
Bayesian analysis. He explains how Bayesian analysis differs from
conventional statistics. Rich introduces Bayes' rule, and talks about
how HB can be applied to conjoint analysis and other marketing research
problems where respondents provide multiple observations. Rich
reports findings demonstrating that HB generally performs better than
traditional methods for conjoint and regression problems.
- New Advances Shed light on HB Anomalies
Hierarchical Bayes estimation for choice data represents one of the most successful new
developments in our field. HB has proven robust for ratings-based conjoint, ACA, and
full-profile CBC projects. Tests comparing HB to other methods of part worth estimation
have generally favored HB. However, two anomalies specific to HB estimation have
caused us some puzzlement and concern.
- The "omitted" level in effects coding for conjoint analysis results in overstatement of
the variance, and in extreme cases (very sparse data and very many levels within an attribute)
biased point estimates.
- HB was demonstrated to have problems in individual-level estimation for some partial-profile
CBC data sets.
This paper shows that the problems above can be controlled or even solved by setting proper
"priors" in HB. The anomalies therefore do not point to a weakness in HB methods, but simply
illustrate that we were not defining the models properly in certain circumstances. HB researchers
should be aware of the kinds of data sets that can challenge "generic" HB estimation under
Sawtooth Software's default settings, and learn to manage these through more proper specification
of the priors.
- One Size Fits All or Custom Tailored: Which HB Fits Better?
The authors (Keith Sentis and Lihua Li) investigated whether the assumption in
HB of a single multivariate normal distribution to reflect the population
negatively affected the estimated utilities if segments existed with quite
different utilities. The authors studied seven actual CBC data sets,
systematically excluding some of the tasks to serve as holdouts for internal
validation. Keith and Lihua found that whether one ran HB on the entire sample,
or whether one segmented first (K-means, demographic, or Latent Class) prior to
estimating utilities, the upper-level model assumption in HB of normality did
not decrease the fit of the estimated utilities to the holdouts. It seemed
unnecessary to segment first before running HB.
- The Joys and Sorrows of Implementing HB Methods for Conjoint Analysis
This paper was originally delivered at the 1999 Hierarchical Bayes Conference at
Ohio State University by Rich Johnson. Rich recaps his experience with
HB methods, particularly as they relate to conjoint analysis. He points
out that HB usually either matches or beats traditional estimation of
part worth utilities. He also illustrates some interesting artifacts
regarding HB estimation dealing with distortions in the variances of
estimates.
- Monotonicity Constraints in Choice-Based Conjoint with Hierarchical Bayes
Conjoint analysts often discover that some of the part worths don't conform to
expectations. We generally expect low prices to be preferred to high prices,
high performance to low performance, etc. But, with individual-level CBC
part worths, we often notice violations (reversals) of rational ordering.
The author (Rich Johnson) investigates six alternative approaches to
constraining part worths for two commercial data sets within the context
of HB estimation. Two of the best
methods presented in this paper are implemented in CBC/HB v1.5 software. Rich concludes:
"If the primary purpose of the study is to predict individual choices, then
it appears desirable to enforce monotonicity constraints. On the other hand,
if the primary purpose of the study is to predict aggregate measures such
as market shares, monotonicity constraints appear less helpful, and may
occasionally even be harmful."
- Perspectives Based on 10 Years of HB in Marketing Research
Greg Allenby and Peter Rossi describe the history of HB methods as they relate to marketing research methods. They
describe the theory behind HB, the challenges in implementing HB methods for marketing research in the 1990s, and what
they see as the future applications of HB within marketing research. They predict that over the next 10 years,
HB will enable researchers to develop more rich models of consumer behavior. We will extend the standard preference models
to incorporate more complex behavioral components, including screening rules in conjoint analysis (conjunctive, disjunctive, compensatory),
satiation, scale usage, and inter-dependent preferences among consumers. New models will approach preference from the multitude of
basic concerns and interests that give rise to needs. Common to all these problems is a dramatic increase in the number of explanatory variables.
ACA-Related Papers
- History of ACA
In this paper, Rich Johnson, Sawtooth Software's founder, recounts the
history of Adaptive Conjoint Analysis (ACA). He traces its development
and theoretical roots from the early trade-off matrices through today's
current software solution. This paper, originally presented at the 2001
Sawtooth Software Conference, is an excellent primer on the theory and
mechanics of Adaptive Conjoint Analysis.
- Staying Out of Trouble with ACA
Though we've been told that ACA is remarkably easy to use, our users run into
problems from time to time. 18 of the most common pitfalls are discussed. Most
of the pitfalls listed focus on design and interpretation issues. A must read
for ACA users, originally published in Sawtooth Solutions, Spring 1996.
- Perspectives on the Recent Debate over Conjoint Analysis and Modeling Preferences with ACA
The author responds to recent criticism of conjoint methods and compares ACA
with self-explicated methods. The author provides his perspective on using
ACA, some shortcomings of the method, and recent developments that have
eliminated or reduced those shortcomings. The benefits of using HB
estimation for modeling ACA part worths are demonstrated using an actual ACA project.
- Accuracy of Utility Estimation in ACA
Results from a Monte Carlo simulation are reported showing that ACA's estimation
technique is unbiased. The accuracy of utility estimation under various
questionnaire conditions (e.g. 2 attributes vs. 5 attributes in the pairs section)
is shown. The research concludes that ACA is accurate at estimating respondents'
utilities, provided they respond consistently.
- Validation of Adaptive Conjoint Analysis (ACA) Versus Standard Concept Testing
As market researchers, we strive to create conjoint models that
are predictive of actual purchase behavior. But it is
difficult to both design good validation studies and convince the
owners of the data to let one publicly share the results.
This paper by James J. Tumbusch of MarketVision Research, Inc. (originally published
in the 1991 Sawtooth Software Conference Proceedings) presents a
compelling real-world validation of conjoint and ACA. Conjoint predictions
are compared with traditional concept testing for four different frequently
purchased product categories. High correlations were found--even though
the conjoint and concept test samples were independent, and the conjoint studies
preceded the concept test data collection by up to 12 months.
- The "Importance" Question in ACA: Can It Be Omitted?
Although ACA has proven to be a useful and popular technique over two decades, many researchers
have argued that the self-explicated importance question in the ACA "Priors" may be a
weak link. The self-explicated importances can be confusing to some respondents, and
the metric information provided by the responses may flatten the final derived importances.
In this article, the authors report on a split-sample methodological study that tests an
altered version of ACA (that skips the Importance questions) against the original ACA. The
modified ACA is shown to produce directionally better share predictions of holdout choice
tasks than the original ACA, with a lower overall interviewing time. Also, there is evidence
that the information provided by the self-explicated importances is not only flatter than
that contributed by the conjoint Pairs section, but the information is different.
- Reducing the Number-of-Attribute-Levels Effect in ACA with Optimal Weighting
The Number-of-Levels (NOL) Effect is troublesome in conjoint research. One can
increase the apparent importance of an attribute by adding more levels.
Past research has shown that ACA (Equal Weighting) is less susceptible to
the NOL effect than traditional
conjoint and CBC. There is yet another way to reduce the NOL effect even
further with ACA by using the "Optimal Weighting" feature available in ACA
Version 4. This paper demonstrates the difference in attribute importances
between the Equal Weighting and Optimal Weighting options, and quantifies
the reduction in the effect for two data sets.
The author concludes: "The optimal weighting method appears to have been a
nice addition to ACA. It probably deserves more credit than it has been given.
We . . . have believed for some time that optimal weighting provided modest
improvements to ACA utilities . . . We now recognize that (it) plays a
significant role in reducing the NOL effect, and recommend that ACA users
use optimal weighting, especially when the number of levels varies across
attributes in the design."
- An Empirical Comparison of ACA and Full Profile Judgments
Huber, Wittink, Fiedler and Miller present a methodological
study comparing ACA with traditional full profile conjoint. 300 respondents
completed both an ACA and a full profile task administered one concept at
a time by computer about preferences for refrigerators.
The order of the two conjoint tasks was rotated to control for order effects.
The authors compare how well results from the two methods predict
hold-out concepts. They conclude: "For both five . . . and nine attributes we
find that ACA outperforms the full profile method. We have broken down the
overall performance results in a number of ways, and observe that ACA maintains
an edge, compared to computer-administered full-profile."
- Calibrating Price in ACA: The ACA Price Effect and How to Manage It
Even though ACA is one of the most popular conjoint analysis techniques,
it has been shown often to understate the importance of price. This
article by Peter Williams demonstrates a method of adjusting the price
utilities within ACA studies using holdout choice tasks. The holdout tasks
typically include a stripped down product at a cheap price, a mid-range
product at a medium price, and a feature-rich product at a premium price.
Williams suggests counting the number of times respondents choose
higher-priced alternatives (this requires multiple choice tasks), and
segmenting respondents based on that scored variable. Then, he suggests
developing a separate weighting factor for the ACA price utilities for
each segment. He demonstrated the technique with an ACA study involving
969 respondents. He found that no adjustment was necessary for the group
that preferred high-priced, high-quality offers; a scaling factor of 2
for price was required for the mid-price segment; and a scaling factor
of slightly more than 4 was required for the price sensitive segment.
- Multistage Conjoint Methods to Measure Price Sensitivity
Some researchers have discovered that they can obtain better
overall results by combining ACA with a second conjoint module.
The author, Jon Pinnell of IntelliQuest, refers to this as "Multistage Conjoint" or
"Dual Conjoint" and describes a procedure for combining ACA with a full-profile conjoint or
choice-based conjoint exercise. ACA is used to estimate utilities for a wide
range of features, while the second conjoint focuses on a limited set of
features and issues such as price sensitivity. The author reports that ACA studies which
include price as just one of many attributes (more than about 10) tend to assign too little
weight to price. Pinnell suggests ways to increase the price weight by
bridging price information from the second conjoint module.
- Scaling Prior Utilities in Sawtooth Software's Adaptive Conjoint Analysis
The 4-point importance scale used in the self-explicated priors in ACA has been
a focus of some debate. Specifically, it has been suggested that
the 4-point scale is too coarse. William McLauchlan studied the effects of using
different scales in ACA, and presented the results via this paper at the 1991
Sawtooth Software Conference. In cooperation with Sawtooth Software, three versions
of ACA were created and tested: 1) ACA Version 3.0, 2) ACA Version 3.0 with a
9-point importance scale, 3) Analog ACA, which elicited prior utilities using
a finely-graded analog scale. McLauchlan found no significant differences in
predictability of hold-out concepts among the three versions of ACA. However,
the analog version of ACA took significantly more time for respondents to complete.
- Within- and Across-Attribute Constraints in ACA and Full Profile Conjoint Analysis
Many studies have indicated that the predictive validity of partworth
estimates in conjoint analysis can be improved by imposing constraints
on utility estimates. In this paper, two types of constraints are investigated:
within- and across-attribute. Prior information can
be imposed (i.e. a priori order for quantitative variables such as Price) or collected
during
the interview (i.e. self-explicated rankings and importance ratings). The
authors (van der Lans, Wittink, Huber and Vriens) investigate the effect
of imposing constraints on conjoint utilities for full-profile and ACA.
Hit rates for hold-out concepts are shown to increase significantly for
full-profile when utility constraints are imposed. ACA hit rates on
average are higher than full-profile, and are not significantly
improved by imposing constraints. Originally published in 1992 Sawtooth
Software Conference Proceedings.
Perceptual Mapping
- Product Mapping with Perceptions and Preferences
Johnson reviews the history of perceptual mapping as it relates to
marketing research. He notes that approaches have been developed to map
products or objects based on preferences and on perceptions, but seldom
have both elements been combined in product mapping. "Maps based on
perceptions are easy to interpret and good at conveying insights, but
they are often less good at predicting individual preferences," Johnson
explains. "Maps based on preferences are better at accounting for
preferences, but their dimensions are sometimes hard to interpret."
Johnson presents a new method that he terms "Composite Product Mapping"
that combines both perceptions of brands on attributes and preferences
among brands. The perceptual information results from attribute ratings
for brands, and the preference information can come from a variety
of sources, including pairwise judgments or conjoint part worths.
He demonstrates that the composite methods often result in maps that
closely resemble discriminant-based perceptual maps, but that the
attribute vectors and product positions are better linked to preferences.
He also illustrates that composite mapping can result in different (and
more useful) maps than discriminant analysis if the variables that drive
discrimination are not important to preferences. In this case, variables
unimportant with respect to preference are
relegated to less important, higher dimensions with his new approach. Additionally, contours
representing "density of demand" can be added to the maps indicating areas of relative preference.
This paper was originally presented at the 1999 Sawtooth Software Conference.
Past Conference Proceedings
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Suggested lists of Articles:

Getting Started with Conjoint Analysis,
by Bryan Orme (Sawtooth Software's president).
Many of you have asked about where one can find a good introductory book on conjoint analysis... (read more)
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