SlideShare a Scribd company logo
Introduction to
Conjoint Analysis
Adapted from Sawtooth Software, Inc. materials
Different Perspectives, Different Goals
 Buyers want all of the most desirable
features at lowest possible price
 Sellers want to maximize profits by:
1) minimizing costs of providing features
2) providing products that offer greater overall value
than the competition
Demand Side of Equation
 Typical market research role is to focus first
on demand side of the equation
 After figuring out what buyers want, next
assess whether it can be built/provided in a
cost- effective manner
Products/Services are Composed of
Features/Attributes
 Credit Card:
Brand + Interest Rate + Annual Fee + Credit Limit
 On-Line Brokerage:
Brand + Fee + Speed of Transaction + Reliability of
Transaction + Research/Charting Options
Breaking the Problem Down
 If we learn how buyers value the components of
a product, we are in a better position to design
those that improve profitability
How to Learn What Customers Want?
 Ask Direct Questions about preference:
 What brand do you prefer?
 What Interest Rate would you like?
 What Annual Fee would you like?
 What Credit Limit would you like?
 Answers often trivial and unenlightening (e.g.
respondents prefer low fees to high fees,
higher credit limits to low credit limits)
How to Learn What Is Important?
 Ask Direct Questions about importances
 How important is it that you get the <<brand,
interest rate, annual fee, credit limit>> that you
want?
Stated Importances
 Importance Ratings often have low discrimination:
Average Importance Ratings
7.5
8.1
7.2
6.7
0 5 10
Credit Limit
Annual Fee
Interest Rate
Brand
Stated Importances
 Answers often have low discrimination, with
most answers falling in “very important”
categories
 Answers sometimes useful for segmenting
market, but still not as actionable as could be
What is Conjoint Analysis?
 Research technique developed in early 70s
 Measures how buyers value components of a
product/service bundle
 Dictionary definition-- “Conjoint: Joined
together, combined.”
 Marketer’s catch-phrase-- “Features
CONsidered JOINTly”
Important Early Articles
 Luce, Duncan and John Tukey (1964), “Simultaneous Conjoint
Measurement: A New Type of Fundamental Measurement,” Journal of
Mathematical Psychology, 1, 1-27
 Green, Paul and Vithala Rao (1971), “Conjoint Measurement for
Quantifying Judgmental Data,” Journal of Marketing Research, 8 (Aug),
355-363
 Johnson, Richard (1974), “Trade-off Analysis of Consumer Values,”
Journal of Marketing Research, 11 (May), 121-127
 Green, Paul and V. Srinivasan (1978), “Conjoint Analysis in Marketing:
New Development with Implications for Research and Practice,”
Journal of Marketing, 54 (Oct), 3-19
 Louviere, Jordan and George Woodworth (1983), “Design and Analysis
of Simulated Consumer Choice or Allocation Experiments,” Journal of
Marketing Research, 20 (Nov), 350-367
How Does Conjoint Analysis Work?
 We vary the product features (independent variables) to
build many (usually 12 or more) product concepts
 We ask respondents to rate/rank those product concepts
(dependent variable)
 Based on the respondents’ evaluations of the product
concepts, we figure out how much unique value (utility)
each of the features added
 (Regress dependent variable on independent variables;
betas equal part worth utilities.)
What’s So Good about Conjoint?
 More realistic questions:
Would you prefer . . .
210 Horsepower or 140 Horsepower
17 MPG 28 MPG
 If choose left, you prefer Power. If choose right, you
prefer Fuel Economy
 Rather than ask directly whether you prefer Power over
Fuel Economy, we present realistic tradeoff scenarios
and infer preferences from your product choices
What’s So Good about Conjoint?
 When respondents are forced to make
difficult tradeoffs, we learn what they truly
value
First Step: Create Attribute List
 Attributes assumed to be independent (Brand, Speed,
Color, Price, etc.)
 Each attribute has varying degrees, or “levels”
 Brand: Coke, Pepsi, Sprite
 Speed: 5 pages per minute, 10 pages per minute
 Color: Red, Blue, Green, Black
 Each level is assumed to be mutually exclusive of the
others (a product has one and only one level level of
that attribute)
Rules for Formulating Attribute Levels
 Levels are assumed to be mutually exclusive
Attribute: Add-on features
level 1: Sunroof
level 2: GPS System
level 3: Video Screen
 If define levels in this way, you cannot determine
the value of providing two or three of these features
at the same time
 Levels should have concrete/unambiguous
meaning
“Very expensive” vs. “Costs $575”
“Weight: 5 to 7 kilos” vs. “Weight 6 kilos”
 One description leaves meaning up to individual
interpretation, while the other does not
Rules for Formulating Attribute Levels
 Don’t include too many levels for any one attribute
 The usual number is about 3 to 5 levels per attribute
 The temptation (for example) is to include many, many
levels of price, so we can estimate people’s preferences
for each
 But, you spread your precious observations across more
parameters to be estimated, resulting in noisier (less
precise) measurement of ALL price levels
 Better approach usually is to interpolate between fewer
more precisely measured levels for “not asked about”
prices
Rules for Formulating Attribute Levels
 Whenever possible, try to balance the number of levels
across attributes
 There is a well-known bias in conjoint analysis called the
“Number of Levels Effect”
 Holding all else constant, attributes defined on more
levels than others will be biased upwards in importance
 For example, price defined as ($10, $12, $14, $16, $18, $20)
will receive higher relative importance than when
defined as ($10, $15, $20) even though the same range was
measured
 The Number of Levels effect holds for quantitative (e.g.
price, speed) and categorical (e.g. brand, color) attributes
Rules for Formulating Attribute Levels
 Make sure levels from your attributes can combine
freely with one another without resulting in utterly
impossible combinations (very unlikely combinations
OK)
 Resist temptation to make attribute prohibitions
(prohibiting levels from one attribute from occurring
with levels from other attributes)!
 Respondents can imagine many possibilities (and
evaluate them consistently) that the study
commissioner doesn’t plan to/can’t offer. By avoiding
prohibitions, we usually improve the estimates of the
combinations that we will actually focus on.
 But, for advanced analysts, some prohibitions are OK,
and even helpful
Rules for Formulating Attribute Levels
Conjoint Analysis Output
 Utilities (part worths)
 Importances
 Market simulations
Conjoint Utilities (Part Worths)
 Numeric values that reflect how desirable
different features are:
Feature Utility
Vanilla 2.5
Chocolate 1.8
25¢ 5.3
35¢ 3.2
50¢ 1.4
 The higher the utility, the better
Conjoint Importances
 Measure of how much influence each attribute has on
people’s choices
 Best minus worst level of each attribute, percentaged:
Vanilla - Chocolate (2.5 - 1.8) = 0.7 15.2%
25¢ - 50¢ (5.3 - 1.4) = 3.9 84.8%
----- --------
Totals: 4.6 100.0%
 Importances are directly affected by the range of levels
you choose for each attribute
Market Simulations
 Make competitive market scenarios and predict
which products respondents would choose
 Accumulate (aggregate) respondent predictions to
make “Shares of Preference” (some refer to them as
“market shares”)
Market Simulation Example
 Predict market shares for 35¢ Vanilla cone vs. 25¢
Chocolate cone for Respondent #1:
Vanilla (2.5) + 35¢ (3.2) = 5.7
Chocolate (1.8) + 25¢ (5.3) = 7.1
 Respondent #1 “chooses” 25¢ Chocolate cone!
 Repeat for rest of respondents. . .
Market Simulation Results
 Predict responses for 500 respondents, and we might
see “shares of preference” like:
 65% of respondents prefer the 25¢ Chocolate cone
35%
65%
Vanilla @ 35¢
Chocolate @ 25¢
Conjoint Market Simulation Assumptions
 All attributes that affect buyer choices in the real world
have been accounted for
 Equal availability (distribution)
 Respondents are aware of all products
 Long-range equilibrium (equal time on market)
 Equal effectiveness of sales force
 No out-of-stock conditions
Shares of Preference Don’t Always
Match Actual Market Shares
 Conjoint simulator assumptions usually don’t hold
true in the real world
 But this doesn’t mean that conjoint simulators are
not valuable!
 Simulators turn esoteric “utilities” into concrete
“shares”
 Conjoint simulators predict respondents’ interest in
products/services assuming a level playing field
Value of Conjoint Simulators…
Some Examples
 Lets you play “what-if” games to investigate value of
modifications to an existing product
 Lets you estimate how to design new product to
maximize buyer interest at low manufacturing cost
 Lets you investigate product line extensions: do we
cannibalize our own share or take mostly from
competitors?
 Lets you estimate demand curves, and cross-elasticity
curves
 Can provide an important input into demand
forecasting models
Three Main “Flavors” of Conjoint Analysis
 Traditional Full-Profile Conjoint
 Adaptive Conjoint Analysis (ACA)
 Choice-Based Conjoint (CBC), also known as
Discrete Choice Modeling (DCM)
Strengths of Traditional Conjoint
 Good for both product design and pricing
issues
 Can be administered on paper,
computer/internet
 Shows products in full-profile, which many
argue mimics real-world
 Can be used even with very small sample
sizes
Weaknesses of Traditional Full-Profile
Conjoint
 Limited ability to study many attributes
(more than about six)
 Limited ability to measure interactions and
other higher-order effects (cross-effects)
Traditional Conjoint: Card-Sort Method
(Six Attributes)
Using a 100-pt scale where 0 means definitely
would NOT and 100 means definitely WOULD…
How likely are you to purchase…
1997 Honda Accord
Automatic transmission
No antilock brakes
Driver and passenger airbag
Blue exterior/Black interior
$18,900
Your Answer:___________
Six Attributes: Challenging
 Respondents find six attributes in full-profile
challenging
 Need to read a lot of information to evaluate each
card
 Each respondent typically needs to evaluate
around 24-36 cards
Traditional Conjoint: Card-Sort Method (15 Attributes)
Using a 100-pt scale where 0 means definitely would
NOT and 100 means definitely WOULD
How likely are you to purchase…
1997 Honda Accord
Automatic transmission
No antilock brakes
Driver and passenger airbag
Blue exterior/Black interior
50,000 mile warranty
Leather seats
optional trim package
3-year loan
5.9% APR financing
CD-player
No cruise control
Power windows/locks
Remote alarm system
$18,900
15 Attributes: Near Impossible
 Faced with so much reading, respondents are
forced to simplify (focus on just the top few
attributes in importance)
 To get good individual-level results,
respondents need to evaluate around 60-90
cards
Adaptive Conjoint Analysis
 Developed in 80s by Rich Johnson, Sawtooth
Software
 Devised as way to study more attributes than was
prudent with traditional full-profile conjoint
 Adapts to the respondent, focusing on most
important attributes and most relevant levels
 Shows only a few attributes at a time (partial profile)
rather than all attributes at a time (full-profile)
Steps in ACA Survey (1)
 Self-Explicated “Priors” Section
 Preference “Ratings” for the levels of any
attributes that we do not know ahead of time
the order of preference (e.g. brand, color).
Steps in ACA Survey (2)
 Self-Explicated “Priors” Section
 “Importances” Show best and worst levels of
each attribute, and ask respondents how
important the difference is.
Steps in ACA Survey (3)
 Conjoint “Pairs” trade-offs (show only two
to five attributes at a time)
Steps in ACA Survey (4)
 “Calibration Concepts” obtain purchase likelihood
scores for usually four to six concepts defined on
about six attributes (Optional Question)
Adaptive Conjoint Analysis Example
 Sample ACA survey
Strengths of ACA
 Ability to measure many attributes, without
wearing out respondent
 Respondents find interview more interesting
and engaging
 Efficient interview: high ratio of information
gained per respondent effort
 Can be used even with very small sample sizes
ACA Best Practices
 Show only 2 or 3 attributes at a time in the pairs section. More than
that causes respondent fatigue, which outweighs the modest amount of
additional information.
 ACA can measure up to 30 attributes, but users should streamline
studies to have as few attributes as necessary for the business decision.
 Pretest the questionnaire to make sure it is not too long. If too long,
reduce number of attributes, levels, number of pairs questions, or
complexity of pairs questions.
 Examine pretest data to make sure results are logical and conform to
general expectations.
 Make sure respondents are engaged in the task: understanding the
attributes and levels and being in the market/having an interest in the
category.
Weaknesses of ACA
 Partial-profile presentation less realistic than
real world
 Respondents may not be able to assume attributes
not shown are “held constant”
 Often not good at pricing research
 Tends to understate importance of price, and
within each respondent assumes all brands have
equal price elasticities
 Must be computer-administered (PC or Web)
ACA Cons
 Must be a computerized survey.
 Potential double-counting of attributes that are not truly independent.
 Respondents may have difficulty keeping in mind that all other
attributes not involved in the current question are assumed to be equal.
 May “flatten” importances (particularly for low-involvement categories)
due to spreading respondents’ attention across individual attributes--but
the jury is still out.
 Can underestimate the importance of price (especially if many
attributes included). CBC and CVA considered better for pricing
research.
Choice-Based Conjoint (CBC)
 Became popular starting in early 90s
 Respondents are shown sets of cards and
asked to choose which one they would buy
 Can include “None of the above” response, or
multiple “held-constant alternatives”
Choice-Based Conjoint Question
Strengths of CBC
 Questions closely mimic what buyers do in real
world: choose from available products
 Can investigate interactions, alternative-specific
effects
 Can include “None” alternative, or multiple “constant
alternatives”
 Paper or Computer/Web based interviews possible
Weaknesses of CBC
• Usually requires larger sample sizes than with CVA
or ACA
• Tasks are more complex, so respondents can process
fewer attributes (CBC recommended <=6)
• Complex tasks may encourage response
simplification strategies
• Analysis more complex than with CVA or ACA

More Related Content

PPT
Innovation Intro to Conjoint
PPTX
Conjoint analysis
PPTX
Conjoint Analysis
PPT
T21 conjoint analysis
PPT
Conjoint Capabilities 2015
PPTX
Conjoint Analysis.pptx
PPTX
Williamson trade off model
PPT
Chapter 9
Innovation Intro to Conjoint
Conjoint analysis
Conjoint Analysis
T21 conjoint analysis
Conjoint Capabilities 2015
Conjoint Analysis.pptx
Williamson trade off model
Chapter 9

Similar to Innovation-Intro-to-Conjoint (Some methods for analysis) (20)

PPT
Class project ds_604_revise
PPTX
Conjoint by idrees iugc
PPTX
Conjnt analysis
PPTX
Lecture9 conjoint analysis
DOCX
Week 06Conjoint Analysishttpswww.smh.com.au.docx
PDF
Analysis of consumer preferences for new smartphone - Xiomi India
PPT
Planning Innovations: Conjoint Analysis Slides
PPT
Learn how to do a conjoint analysis project in 1 hr
PPTX
Conjoint analysis
PDF
lecture9conjointanalysis-110607121417-phpapp01.pdf
PDF
Introduction to conjoint analysis 2021
PDF
Guide: Conjoint Analysis
PPT
SurveyAnalytics:Conjoint Analysis
PPTX
How to run conjoint analysis
PPTX
How to Run Conjoint Analysis
PPTX
Marketing Analytics.pptx
PPT
Survey analytics conjointanalysis_1
PDF
CONJOINT ANALYSIS
PPTX
How to Run Discrete Choice Conjoint Analysis
PPTX
Conjoint Analysis - Part 1/3
Class project ds_604_revise
Conjoint by idrees iugc
Conjnt analysis
Lecture9 conjoint analysis
Week 06Conjoint Analysishttpswww.smh.com.au.docx
Analysis of consumer preferences for new smartphone - Xiomi India
Planning Innovations: Conjoint Analysis Slides
Learn how to do a conjoint analysis project in 1 hr
Conjoint analysis
lecture9conjointanalysis-110607121417-phpapp01.pdf
Introduction to conjoint analysis 2021
Guide: Conjoint Analysis
SurveyAnalytics:Conjoint Analysis
How to run conjoint analysis
How to Run Conjoint Analysis
Marketing Analytics.pptx
Survey analytics conjointanalysis_1
CONJOINT ANALYSIS
How to Run Discrete Choice Conjoint Analysis
Conjoint Analysis - Part 1/3
Ad

Recently uploaded (20)

PPTX
Introduction to Basics of Ethical Hacking and Penetration Testing -Unit No. 1...
PPTX
Qualitative Qantitative and Mixed Methods.pptx
PDF
Galatica Smart Energy Infrastructure Startup Pitch Deck
PPT
Quality review (1)_presentation of this 21
PPTX
Microsoft-Fabric-Unifying-Analytics-for-the-Modern-Enterprise Solution.pptx
PPT
Reliability_Chapter_ presentation 1221.5784
PPTX
DISORDERS OF THE LIVER, GALLBLADDER AND PANCREASE (1).pptx
PPT
Miokarditis (Inflamasi pada Otot Jantung)
PPTX
01_intro xxxxxxxxxxfffffffffffaaaaaaaaaaafg
PPTX
1_Introduction to advance data techniques.pptx
PPTX
MODULE 8 - DISASTER risk PREPAREDNESS.pptx
PPT
ISS -ESG Data flows What is ESG and HowHow
PDF
Lecture1 pattern recognition............
PPTX
Data_Analytics_and_PowerBI_Presentation.pptx
PDF
Recruitment and Placement PPT.pdfbjfibjdfbjfobj
PPTX
Computer network topology notes for revision
PPTX
Business Ppt On Nestle.pptx huunnnhhgfvu
PPTX
IBA_Chapter_11_Slides_Final_Accessible.pptx
PDF
Fluorescence-microscope_Botany_detailed content
PDF
Foundation of Data Science unit number two notes
Introduction to Basics of Ethical Hacking and Penetration Testing -Unit No. 1...
Qualitative Qantitative and Mixed Methods.pptx
Galatica Smart Energy Infrastructure Startup Pitch Deck
Quality review (1)_presentation of this 21
Microsoft-Fabric-Unifying-Analytics-for-the-Modern-Enterprise Solution.pptx
Reliability_Chapter_ presentation 1221.5784
DISORDERS OF THE LIVER, GALLBLADDER AND PANCREASE (1).pptx
Miokarditis (Inflamasi pada Otot Jantung)
01_intro xxxxxxxxxxfffffffffffaaaaaaaaaaafg
1_Introduction to advance data techniques.pptx
MODULE 8 - DISASTER risk PREPAREDNESS.pptx
ISS -ESG Data flows What is ESG and HowHow
Lecture1 pattern recognition............
Data_Analytics_and_PowerBI_Presentation.pptx
Recruitment and Placement PPT.pdfbjfibjdfbjfobj
Computer network topology notes for revision
Business Ppt On Nestle.pptx huunnnhhgfvu
IBA_Chapter_11_Slides_Final_Accessible.pptx
Fluorescence-microscope_Botany_detailed content
Foundation of Data Science unit number two notes
Ad

Innovation-Intro-to-Conjoint (Some methods for analysis)

  • 1. Introduction to Conjoint Analysis Adapted from Sawtooth Software, Inc. materials
  • 2. Different Perspectives, Different Goals  Buyers want all of the most desirable features at lowest possible price  Sellers want to maximize profits by: 1) minimizing costs of providing features 2) providing products that offer greater overall value than the competition
  • 3. Demand Side of Equation  Typical market research role is to focus first on demand side of the equation  After figuring out what buyers want, next assess whether it can be built/provided in a cost- effective manner
  • 4. Products/Services are Composed of Features/Attributes  Credit Card: Brand + Interest Rate + Annual Fee + Credit Limit  On-Line Brokerage: Brand + Fee + Speed of Transaction + Reliability of Transaction + Research/Charting Options
  • 5. Breaking the Problem Down  If we learn how buyers value the components of a product, we are in a better position to design those that improve profitability
  • 6. How to Learn What Customers Want?  Ask Direct Questions about preference:  What brand do you prefer?  What Interest Rate would you like?  What Annual Fee would you like?  What Credit Limit would you like?  Answers often trivial and unenlightening (e.g. respondents prefer low fees to high fees, higher credit limits to low credit limits)
  • 7. How to Learn What Is Important?  Ask Direct Questions about importances  How important is it that you get the <<brand, interest rate, annual fee, credit limit>> that you want?
  • 8. Stated Importances  Importance Ratings often have low discrimination: Average Importance Ratings 7.5 8.1 7.2 6.7 0 5 10 Credit Limit Annual Fee Interest Rate Brand
  • 9. Stated Importances  Answers often have low discrimination, with most answers falling in “very important” categories  Answers sometimes useful for segmenting market, but still not as actionable as could be
  • 10. What is Conjoint Analysis?  Research technique developed in early 70s  Measures how buyers value components of a product/service bundle  Dictionary definition-- “Conjoint: Joined together, combined.”  Marketer’s catch-phrase-- “Features CONsidered JOINTly”
  • 11. Important Early Articles  Luce, Duncan and John Tukey (1964), “Simultaneous Conjoint Measurement: A New Type of Fundamental Measurement,” Journal of Mathematical Psychology, 1, 1-27  Green, Paul and Vithala Rao (1971), “Conjoint Measurement for Quantifying Judgmental Data,” Journal of Marketing Research, 8 (Aug), 355-363  Johnson, Richard (1974), “Trade-off Analysis of Consumer Values,” Journal of Marketing Research, 11 (May), 121-127  Green, Paul and V. Srinivasan (1978), “Conjoint Analysis in Marketing: New Development with Implications for Research and Practice,” Journal of Marketing, 54 (Oct), 3-19  Louviere, Jordan and George Woodworth (1983), “Design and Analysis of Simulated Consumer Choice or Allocation Experiments,” Journal of Marketing Research, 20 (Nov), 350-367
  • 12. How Does Conjoint Analysis Work?  We vary the product features (independent variables) to build many (usually 12 or more) product concepts  We ask respondents to rate/rank those product concepts (dependent variable)  Based on the respondents’ evaluations of the product concepts, we figure out how much unique value (utility) each of the features added  (Regress dependent variable on independent variables; betas equal part worth utilities.)
  • 13. What’s So Good about Conjoint?  More realistic questions: Would you prefer . . . 210 Horsepower or 140 Horsepower 17 MPG 28 MPG  If choose left, you prefer Power. If choose right, you prefer Fuel Economy  Rather than ask directly whether you prefer Power over Fuel Economy, we present realistic tradeoff scenarios and infer preferences from your product choices
  • 14. What’s So Good about Conjoint?  When respondents are forced to make difficult tradeoffs, we learn what they truly value
  • 15. First Step: Create Attribute List  Attributes assumed to be independent (Brand, Speed, Color, Price, etc.)  Each attribute has varying degrees, or “levels”  Brand: Coke, Pepsi, Sprite  Speed: 5 pages per minute, 10 pages per minute  Color: Red, Blue, Green, Black  Each level is assumed to be mutually exclusive of the others (a product has one and only one level level of that attribute)
  • 16. Rules for Formulating Attribute Levels  Levels are assumed to be mutually exclusive Attribute: Add-on features level 1: Sunroof level 2: GPS System level 3: Video Screen  If define levels in this way, you cannot determine the value of providing two or three of these features at the same time
  • 17.  Levels should have concrete/unambiguous meaning “Very expensive” vs. “Costs $575” “Weight: 5 to 7 kilos” vs. “Weight 6 kilos”  One description leaves meaning up to individual interpretation, while the other does not Rules for Formulating Attribute Levels
  • 18.  Don’t include too many levels for any one attribute  The usual number is about 3 to 5 levels per attribute  The temptation (for example) is to include many, many levels of price, so we can estimate people’s preferences for each  But, you spread your precious observations across more parameters to be estimated, resulting in noisier (less precise) measurement of ALL price levels  Better approach usually is to interpolate between fewer more precisely measured levels for “not asked about” prices Rules for Formulating Attribute Levels
  • 19.  Whenever possible, try to balance the number of levels across attributes  There is a well-known bias in conjoint analysis called the “Number of Levels Effect”  Holding all else constant, attributes defined on more levels than others will be biased upwards in importance  For example, price defined as ($10, $12, $14, $16, $18, $20) will receive higher relative importance than when defined as ($10, $15, $20) even though the same range was measured  The Number of Levels effect holds for quantitative (e.g. price, speed) and categorical (e.g. brand, color) attributes Rules for Formulating Attribute Levels
  • 20.  Make sure levels from your attributes can combine freely with one another without resulting in utterly impossible combinations (very unlikely combinations OK)  Resist temptation to make attribute prohibitions (prohibiting levels from one attribute from occurring with levels from other attributes)!  Respondents can imagine many possibilities (and evaluate them consistently) that the study commissioner doesn’t plan to/can’t offer. By avoiding prohibitions, we usually improve the estimates of the combinations that we will actually focus on.  But, for advanced analysts, some prohibitions are OK, and even helpful Rules for Formulating Attribute Levels
  • 21. Conjoint Analysis Output  Utilities (part worths)  Importances  Market simulations
  • 22. Conjoint Utilities (Part Worths)  Numeric values that reflect how desirable different features are: Feature Utility Vanilla 2.5 Chocolate 1.8 25¢ 5.3 35¢ 3.2 50¢ 1.4  The higher the utility, the better
  • 23. Conjoint Importances  Measure of how much influence each attribute has on people’s choices  Best minus worst level of each attribute, percentaged: Vanilla - Chocolate (2.5 - 1.8) = 0.7 15.2% 25¢ - 50¢ (5.3 - 1.4) = 3.9 84.8% ----- -------- Totals: 4.6 100.0%  Importances are directly affected by the range of levels you choose for each attribute
  • 24. Market Simulations  Make competitive market scenarios and predict which products respondents would choose  Accumulate (aggregate) respondent predictions to make “Shares of Preference” (some refer to them as “market shares”)
  • 25. Market Simulation Example  Predict market shares for 35¢ Vanilla cone vs. 25¢ Chocolate cone for Respondent #1: Vanilla (2.5) + 35¢ (3.2) = 5.7 Chocolate (1.8) + 25¢ (5.3) = 7.1  Respondent #1 “chooses” 25¢ Chocolate cone!  Repeat for rest of respondents. . .
  • 26. Market Simulation Results  Predict responses for 500 respondents, and we might see “shares of preference” like:  65% of respondents prefer the 25¢ Chocolate cone 35% 65% Vanilla @ 35¢ Chocolate @ 25¢
  • 27. Conjoint Market Simulation Assumptions  All attributes that affect buyer choices in the real world have been accounted for  Equal availability (distribution)  Respondents are aware of all products  Long-range equilibrium (equal time on market)  Equal effectiveness of sales force  No out-of-stock conditions
  • 28. Shares of Preference Don’t Always Match Actual Market Shares  Conjoint simulator assumptions usually don’t hold true in the real world  But this doesn’t mean that conjoint simulators are not valuable!  Simulators turn esoteric “utilities” into concrete “shares”  Conjoint simulators predict respondents’ interest in products/services assuming a level playing field
  • 29. Value of Conjoint Simulators… Some Examples  Lets you play “what-if” games to investigate value of modifications to an existing product  Lets you estimate how to design new product to maximize buyer interest at low manufacturing cost  Lets you investigate product line extensions: do we cannibalize our own share or take mostly from competitors?  Lets you estimate demand curves, and cross-elasticity curves  Can provide an important input into demand forecasting models
  • 30. Three Main “Flavors” of Conjoint Analysis  Traditional Full-Profile Conjoint  Adaptive Conjoint Analysis (ACA)  Choice-Based Conjoint (CBC), also known as Discrete Choice Modeling (DCM)
  • 31. Strengths of Traditional Conjoint  Good for both product design and pricing issues  Can be administered on paper, computer/internet  Shows products in full-profile, which many argue mimics real-world  Can be used even with very small sample sizes
  • 32. Weaknesses of Traditional Full-Profile Conjoint  Limited ability to study many attributes (more than about six)  Limited ability to measure interactions and other higher-order effects (cross-effects)
  • 33. Traditional Conjoint: Card-Sort Method (Six Attributes) Using a 100-pt scale where 0 means definitely would NOT and 100 means definitely WOULD… How likely are you to purchase… 1997 Honda Accord Automatic transmission No antilock brakes Driver and passenger airbag Blue exterior/Black interior $18,900 Your Answer:___________
  • 34. Six Attributes: Challenging  Respondents find six attributes in full-profile challenging  Need to read a lot of information to evaluate each card  Each respondent typically needs to evaluate around 24-36 cards
  • 35. Traditional Conjoint: Card-Sort Method (15 Attributes) Using a 100-pt scale where 0 means definitely would NOT and 100 means definitely WOULD How likely are you to purchase… 1997 Honda Accord Automatic transmission No antilock brakes Driver and passenger airbag Blue exterior/Black interior 50,000 mile warranty Leather seats optional trim package 3-year loan 5.9% APR financing CD-player No cruise control Power windows/locks Remote alarm system $18,900
  • 36. 15 Attributes: Near Impossible  Faced with so much reading, respondents are forced to simplify (focus on just the top few attributes in importance)  To get good individual-level results, respondents need to evaluate around 60-90 cards
  • 37. Adaptive Conjoint Analysis  Developed in 80s by Rich Johnson, Sawtooth Software  Devised as way to study more attributes than was prudent with traditional full-profile conjoint  Adapts to the respondent, focusing on most important attributes and most relevant levels  Shows only a few attributes at a time (partial profile) rather than all attributes at a time (full-profile)
  • 38. Steps in ACA Survey (1)  Self-Explicated “Priors” Section  Preference “Ratings” for the levels of any attributes that we do not know ahead of time the order of preference (e.g. brand, color).
  • 39. Steps in ACA Survey (2)  Self-Explicated “Priors” Section  “Importances” Show best and worst levels of each attribute, and ask respondents how important the difference is.
  • 40. Steps in ACA Survey (3)  Conjoint “Pairs” trade-offs (show only two to five attributes at a time)
  • 41. Steps in ACA Survey (4)  “Calibration Concepts” obtain purchase likelihood scores for usually four to six concepts defined on about six attributes (Optional Question)
  • 42. Adaptive Conjoint Analysis Example  Sample ACA survey
  • 43. Strengths of ACA  Ability to measure many attributes, without wearing out respondent  Respondents find interview more interesting and engaging  Efficient interview: high ratio of information gained per respondent effort  Can be used even with very small sample sizes
  • 44. ACA Best Practices  Show only 2 or 3 attributes at a time in the pairs section. More than that causes respondent fatigue, which outweighs the modest amount of additional information.  ACA can measure up to 30 attributes, but users should streamline studies to have as few attributes as necessary for the business decision.  Pretest the questionnaire to make sure it is not too long. If too long, reduce number of attributes, levels, number of pairs questions, or complexity of pairs questions.  Examine pretest data to make sure results are logical and conform to general expectations.  Make sure respondents are engaged in the task: understanding the attributes and levels and being in the market/having an interest in the category.
  • 45. Weaknesses of ACA  Partial-profile presentation less realistic than real world  Respondents may not be able to assume attributes not shown are “held constant”  Often not good at pricing research  Tends to understate importance of price, and within each respondent assumes all brands have equal price elasticities  Must be computer-administered (PC or Web)
  • 46. ACA Cons  Must be a computerized survey.  Potential double-counting of attributes that are not truly independent.  Respondents may have difficulty keeping in mind that all other attributes not involved in the current question are assumed to be equal.  May “flatten” importances (particularly for low-involvement categories) due to spreading respondents’ attention across individual attributes--but the jury is still out.  Can underestimate the importance of price (especially if many attributes included). CBC and CVA considered better for pricing research.
  • 47. Choice-Based Conjoint (CBC)  Became popular starting in early 90s  Respondents are shown sets of cards and asked to choose which one they would buy  Can include “None of the above” response, or multiple “held-constant alternatives”
  • 49. Strengths of CBC  Questions closely mimic what buyers do in real world: choose from available products  Can investigate interactions, alternative-specific effects  Can include “None” alternative, or multiple “constant alternatives”  Paper or Computer/Web based interviews possible
  • 50. Weaknesses of CBC • Usually requires larger sample sizes than with CVA or ACA • Tasks are more complex, so respondents can process fewer attributes (CBC recommended <=6) • Complex tasks may encourage response simplification strategies • Analysis more complex than with CVA or ACA