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Perceptual Mapping: MDPREF

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Title: Perceptual Mapping: MDPREF


1
Perceptual Mapping MDPREF
  • Scott Smith
  • Brigham Young University

2
Positioning Using Perceptual Preference Maps
  • Segmentation Identification and targeting groups
    of customers most likely to purchase the products
    and services being offered.
  • Differentiation Product differentiation
    typically occurs in the growth stage of the
    product life-cycle. The objective of product
    differentiation is to design and offer a product
    that has meaningful differences (tangible or
    intangible) on one or two key dimensions that
    distinguish it from the competitors.
  • Positioning Product positioning is an even more
    aggressive marketing strategy that occurs after
    product differentiation has been implemented.
    Product positioning typically occurs in the
    maturity stage of the product lives cycle and
    focuses on targeting a specific product segment
    with a product having the features and benefits
    that they most desire. Positioning strategies
    are implemented to emphasize key differences
    between your product and your competitors so
    that you can gain a more competitive or distinct
    position in the minds of customers.
  • Perceptual MappingStatistical Techniques that
    allow the display of objects in multivariate
    space. In marketing, managers develop
    differentiation and positioning strategies by
    visualizing the competitive structure of their
    markets as perceived by their customers.

3
The Essence of Positioning Studies
  • There are multiple attributes and benefits that
    are of value to customers.
  • A single product has difficulty providing
    outstanding performance across all attributes and
    benefits.For example, high gas mileage is
    incompatible with the towing power of a 9
    passenger 4x4 Chevrolet Suburban.
  • Markets are segmented to find similar groups of
    consumers who seek common bundles of attributes
    and benefits. New benefit bundles can be used to
    form new concepts.
  • There are differences in products that supply
    those attributes and benefits.

4
Conventional MappingTwo Products on a Snake
Chart
  • 1. Company provides adequate insurance coverage
    for my car.
  • 2. Company will not cancel policy because of
    age, accident experience, or health problems.
  • 3. Friendly and considerate.
  • 4. Settles claims fairly.
  • 5. Inefficient, hard to deal with.
  • 6. Provides good advice about types and amounts
    of coverage to buy.
  • 7. Too big to care about individual customers.
  • 8. Explains things clearly.
  • 9. Premium rates are lower than most companies.
  • 10. Has personnel available for questions all
    over the country.
  • 11. Will raise premiums because of age.
  • 12. Takes a long time to settle a claim.
  • 13. Very professional/modern.
  • 14. Specialists in serving my local area.
  • 15. Quick, reliable service, easily accessible.
  • 16. A good citizen in community.
  • 17. Has complete line of insurance products
    available.
  • 18. Is widely known name company.
  • 19. Is very aggressive, rapidly growing company.

Company A Company B
5
Example Plot of Attributes of Laptops on a 2D
Perceptual Map
(Plain)
Common
Toshiba 1960CT
Easy setup
Slow
Performance
Light
GoodValue
IBM 701 CButterfly
Elegant
Looks
6
How to Develop A Perceptual Map Using Attribute
Ratings
  • Generate an Brand by Attribute matrix of inputs
    consisting of each consumers ratings of each
    brand on each of the attributes (A1, A2, A3,....)
  • A1 A2 A3 A4 ............... A15
  • Dell 710 6 3 7 2 2
  • Compaq 8100 4 3 4 1 5
  • Toshiba Construct 3 6 2 7 7
  • Note that in this matrix the columns become the
    vectors in the map and rows are the points in the
    map
  • Compute average ratings of each brand on each
    attribute. Submit data to a suitable perceptual
    mapping technique (e.g., MDPREF or Factor
    Analysis).
  • Interpret the underlying key dimensions of the
    map using the directions of the individual
    attributes.
  • Explore the implications of how consumers view
    the competing products.

7
How to Develop A Perceptual Map of Market
Segments Using Attribute Ratings (INDSCAL,
PREFMAP)
  • Generate an Brand by Attribute matrix of inputs
    consisting of each consumer segments (S1,
    S2,...) Ratings of each brand on each of the
    attributes (A1, A2, A3,....) for each brand
    (named).
  • A1 A2 A3 A4 ............... A15
  • Dell 710XN 6 3 7 2 2
  • S1 Compaq 8100 4 3 4 1 5
  • Toshiba Construct 3 6 2 7 7
  • Dell 710XN
  • S2 Compaq 8100
  • Toshiba ConstructNote that in this matrix the
    columns become the vectors in the map and rows
    are the points in the map
  • Compute average ratings of each brand on each
    attribute. Submit data to a suitable perceptual
    mapping technique (e.g., MDPREF or Factor
    Analysis).
  • Interpret the underlying key dimensions of the
    map using the directions of the individual
    attributes.
  • Explore the implications of how consumers view
    the competing products.

8
Interpreting MDPREF Perceptual Maps
  • MDPREF is a Point-Vector Model. The points
    represent the rows of the preference matrix
    (brands) and the vectors represent the attributes
    that are evaluated
  • The vector is of length 1.0 and the perceptual
    map should show an arrow indicating the direction
    toward which the attribute is increasing (The
    attribute is decreasing in the direction opposite
    to the arrow).
  • The length of the line from the origin to the
    arrow is an indicator of the variance of that
    attribute explained by the attribute vector in
    that dimensional space (more dimensions add more
    variance explanation). The longer this line, the
    greater is the importance of that attribute in
    this space.

9
Interpreting Perceptual andPreference Maps
  • Technical adequacy
  • What percentage of variance in the raw data is
    captured in the map?
  • What percentage of the variance of each attribute
    is captured in the map?
  • Managerial interpretation
  • What underlying dimensions characterize how
    consumers view the products?
  • What is the competitive set associated with the
    new concept?
  • How well is the new concept positioned with
    respect to the existing brands?
  • Which attributes are related to each other?
  • Which attributes influence customer preferences
    positively? Negatively?
  • What improvements will enhance the value of the
    new concept?
  • Which customer segments have positive perceptions
    and high preference for the new concept?

10
Example Input Data forMDPREF Vector Model
Input matrix has attributes on rows and objects
on columns B1 B2 B3 B3 B4 B5 B6 B7 B8 New Attract
ive 5.1 3.6 3.5 5.4 3.9 4.8 5.2 4.0 5.2 4.0Light
6.0 3.5 5.0 3.9 3.3 5.3 5.0 2.5 5.5 2.5Unreliable
3.4 4.1 4.5 2.1 4.5 2.7 4.5 3.7 2.5 3.8Plain 1.5
4.1 2.9 2.3 4.5 2.7 3.5 4.3 2.2 5.2Battery
life 3.3 4.9 4.3 4.1 3.9 3.0 3.5 6.2 3.5 4.0Scree
n 3.5 5.3 3.4 6.4 5.4 5.2 3.3 6.0 3.3 4.8Keyboard
2.6 3.5 2.5 3.4 3.8 3.3 2.8 5.0 4.3 4.7Roomy 5.5
4.3 5.4 3.1 3.4 3.3 4.7 3.5 4.3 4.2Easy
service 4.5 4.9 3.3 5.0 4.4 4.5 3.3 4.7 3.8 4.5Ex
pandability 5.5 4.3 5.4 3.1 3.4 3.3 4.7 3.5 4.3 4.
2Setup 5.6 3.5 5.6 5.4 2.5 4.2 5.2 3.3 5.8 2.5Co
mmon 4.1 3.5 3.3 2.9 4.0 4.3 2.2 4.2 3.3 4.2Value
3.5 4.8 4.4 3.6 3.6 2.7 3.2 4.7 3.5 4.0Preferenc
e 7.4 3.4 4.8 6.6 4.4 7.4 7.1 3.8 6.9 3.3
11
Preference Map Using MDPREF Vector Model
Low battery life
Keyboard
Expandability
  • Toshiba

Elegant
Distinct
  • New Concept

Unsuccessful
Avant-Garde
Heavy
Fast operation
  • IBM
  • Compaq

Reliable
  • Sanyo
  • Good design
  • TI
  • AST Exec

Difficult to use
  • Dell
  • NEC

Value Graphics
Poor setup
  • Samsung

Screen quality
  • Preference

12
Approaches To Creating Perceptual Maps
Perceptual map
Attribute data
Nonattribute data
Preference
Similarity
Correspondence analysis
Discriminant analysis
Factor analysis
MDS
13
Attribute Based Approaches
  • Assumption
  • The attributes on which the individuals'
    perceptions of objects are based, can be
    identified
  • Methods Used to Reduce the Attributes to a
    Smaller Number of Dimensions
  • Factor Analysis
  • Discriminant Analysis
  • Correspondence Analysis
  • Multidimensional Preference Mapping

14
Distinctions Between Methods
  • Factor Analysis
  • Combines variables to create new factors and
    accesses the underlying constructs based on the
    commonality within each of the variables
    (variable common unique error)
  • Factors New non-correlated variables Factor
    Scores Scores of respondents on factors
  • Discriminant Analysis
  • Used to classify the objects or people into
    predefined groups (user-non user) based on their
    attributes
  • Discriminant function based on independent
    variables is used to predict the category
  • Correspondence Analysis
  • Used for convenience of collection of data in
    binary form (frequency counts)
  • Selection of some attributes or listing of user
    perceived attributes to reduce attributes
  • Multidimensional Preference Analysis
  • Used to map in joint attribute and brand space,
    the preference for brands based on the attributes
    used to evaluate them
  • Underlying dimensions, positioning of brands and
    positioning of brands with respect to dimensions
    and attributes

15
Factor Analysis Why do we look at dimensions
  • We study phenomena that can not be directly
    observed
  • (ego, personality, intelligence, perceptions of
    attributes and products)
  • We have too many attributes or variables
  • need to reduce them to a smaller set of factors
  • We identify attribute-variable Items that
    describe an underlying set of latent factors.
  • We want to know what these factors are.
  • We have an idea of the phenomena that a set of
    items represent (construct validity).
  • We find underlying latent constructs
  • As manifested in individual items
  • We assess the association between these factors
  • We produce usable scores that reflect critical
    aspects of any complex phenomenon
  • (e.g. Attributes, life style, personality,
    intelligence, etc.)
  • This is an end in itself in terms of defining
    structure. Factor analysis is also a major step
    toward creating measures of the dimensions or
    constructs that define the behavior or activity
    of interest.

16
The Basic Idea of Factor Analysis
  • If two items are highly correlated
  • They must represent the same phenomenon
  • If they tell us about the same underlying
    variance, combining them to form a single measure
    is reasonable for two reasons
  • Parsimony
  • Reduction in Error
  • Correlated variables can be represented by a
    regression line
  • BUT suppose a whole group of variables provide
    information that represents this underlying
    phenomena.
  • FACTOR ANALYSIS looks for the phenomena
    underlying the observed variance and covariance
    in a set of variables.
  • These phenomena are called factors or
    principal components.

17
Factor Analysis
Two variable situation
Three variable situation
Refers to common variance or extracted factor
Refers to common variance or extracted factor
18
What Happens - Start With Correlation Matrix
19
FACTOR ANALYSIS - communalities
  • A measure of how much variance is or can be
    accounted for by the observed factors
  • Uniqueness is 1-communality
  • With Principal Components Analysis with all
    factors, Communality always 1 (100 of variance
    is explained by common unique factors
  • With FA, the initial value is the maximum
    multiple R2 for the association between a item
    and any of the other items in the model

PCA
FA
20
What HappensComputing Factors
Eigenvalue/N of items
An Eigenvalue is an index of the strength of the
factor. An eigenvalue reports the amount of
variance accounted for by the factor. It is the
sum of the squared loadings (correlations between
the variables and the factor).
21
What happensFactor Loadings
Eigenvalue of factor 1 .612 .612 .592 .732
.772 .762 2.802
22
Rotation to Make the Solution more Interpretable
  • Makes solution more interpretable
  • Orthogonal (Uncorrelated, or geometrically,
    having spatial representations at 90 degree
    angles) or Oblique (correlated factors, or
    geometrically having spatial representations at
    angles other than 90 degrees).
  • ROTATION IS FOR INTERPRETATION PURPOSES
  • Varimax is the most commonly used.

23
Real Example
  • To further examine attendance success at offshore
    US and domestic Japanese trade shows, and to
    explore the role of prior trade show attendance
    success in generating interest in that show in
    the future, an orthogonal principal components
    factor analysis was conducted.
  • All factors with Eigenvalues of 1.0 or greater
    were retained in the final solutions, yielding
    four-factor solutions for both the US and
    Japanese shows, explaining 74 percent and 78
    percent of each set of variables common
    variance, respectively.
  • With factors identified, factor scores were then
    regressed upon a measure of future interest for
    each respective trade show1. Therefore, the
    results from factor analyses presented in Tables
    IV and V are useful in two predominant ways
  • (1) to identify underlying dimensions of Japanese
    attendance objective success at a US and domestic
    show and
  • (2) to address effectively issues of
    multicollinearity between independent variables
    (trade show success ratings) when exploring the
    impact of success of prior trade show attendance
    on interest in future attendance.
  • Because a factor is a qualitative dimension, the
    researcher is required to name each factor based
    on an interpretation of the variables loading
    most heavily on it.

24
Success of Japanese Attendees at a US Show
25
Success of Japanese Attendees at a Japanese Show
26
How Do We Evaluate the Quality of the Solution?
  • Does it make sense?
  • Are the values in the reproduced matrix small?
  • Are the final communalities large when the number
    of factors is small?
  • Is it useful?
  • Think of why you did the analysis to begin with.
    OR
  • 1. Dont evaluate, just accept it as reality.
  • Try using theory to validate

27
Basic Concepts of Multidimensional Scaling(MDS)
  • MDS uses proximities among different objects as
    input
  • Proximity value which denotes how similar or
    how different two objects, are perceived to be
  • MDS uses this proximities data to produce a
    geometric configuration of points (objects), in a
    two-dimensional space as output

28
Advantages of Attribute-based MDS
  • Attributes can have diagnostic and operational
    value
  • Attribute data is easier for the respondents to
    use
  • Dimensions based on attribute data predicted
    preference better as compared to non-attribute
    data

29
Disadvantages of Attribute-based MDS (MDPREF)
  • If the list of attributes is not accurate and
    complete, the study will suffer accordingly
  • Respondents may not perceive or evaluate objects
    in terms of underlying attributes
  • May require more dimensions to represent them
    than the use of flexible models

30
Application of MDS With Nonattribute Data (KYST)
  • Similarity Data
  • Reflect the perceived similarity of two objects
    from the respondents' perspective
  • Perceptual map is obtained from the average
    similarity ratings
  • The power of the technique lies in the ability to
    find the smallest number of dimensions for which
    there is a reasonably good fit between the input
    similarity rankings and the rankings of the
    distance between objects in the resulting space
  • Preference Data
  • An ideal object is the combination of all
    customers' preferred attribute levels
  • Location of ideal objects is to identify segments
    of customers who have similar ideal objects,
    since customer preferences are always
    heterogeneous

31
Evaluating the MDS Solution
  • The fit between the derived distances and the two
    proximities in each dimension is evaluated
    through a measure called stress
  • The appropriate number of dimensions required to
    locate the objects can be obtained plotting the
    stress values against the number of dimensions

32
General Issues in MDS
  • Perceptual mapping has not been shown to be
    reliable across different methods, but methods
    like KYST (for similarities or dissimilarities
    data) are pretty good.
  • The effect of market events on the perceptual
    maps cannot be ascertained
  • The interpretation of dimensions is difficult
  • When more than two or three dimensions are
    needed, the usefulness is reduced
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