M21 - Tutorial Conjoint Analysis Flashcards

1
Q

Conjoint analysis

–> what is your prference order for the products?

A
  • method used to quantify the utility perceived by a single person
  • -> individual analysis
  • objects are seen as a bundled set of attribute values
  • considered jointly
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2
Q

What are the two types of basic classes of methods for conjoint analysis?

A

Traditional

Choice-based

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3
Q

Traditionalconjoint analysis

A
  • objects are ranke din order of prefernce
  • based on this ordinal ranking, metric part-worth utilities fo the individual attribute values of the objects are estimated
  • -> sum of. Partworth utilities = total utility of objects
  • evaluator has a totally deterministic preference model
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4
Q

Choice-based conjoint model

A
  • evaluator makes selection decision put of the considered set of objects
  • no ranking but selection of the best alternative ( no choice is also possible)
  • estimation of metricpartworth utilities for the individual attribute values of the objects based on ordinal ranking
    Sum of utilities partworths = total utility per object
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5
Q

Adv of conjoint analysis

A
  • valid in evaluating price - how much a customer is willing to pay for a good
  • variables can be categorial, rather than continuous
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6
Q

Conjoint procedure

A
1 attributes and attribute valued
2 survey design 
2a definition of stimuli
2b number of stimuli
3 evaluation of stimuli
4 estimation of the utility values
5 aggregation of the utility values
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7
Q

Attributes and attribute values

Attributes must be...
1
2
3
Attribute values must be ...
4
5
Attributes and attribute values must be...
6
7
A

Attributes must be…
1. relevant for pref decision
2 manipulable in reality
3 should be independent

Attribute values…
4 feasible
5 in a compensatory relship with each other

Attributes and attribute values must be..
6 not constitute criteria for exclusion
7 must be few

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8
Q

Stimulus

Def

Methods

A

= combination of attribute values

  1. profile method: one value of each attribute
  2. two-factor method: only two attributes are included and compaired pairwise
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9
Q

Survey design - number of stimuli

The number of stimuli … … with the number of … …

  • 2 designs
A

Survey design - number of stimuli

The number of stimuli INCREASES EXPONENTIALLY with the number of ATTRIBUTE VALUES

  • full design - usually not practical
  • reduced design - subwst of stimuli that represengs tje full design as well as possible
  • -> random sample
  • -> if all attributes have the same no of values –> symmetric design asymmetric

Symmetric design = latin design

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10
Q

Assessment of the stimuli methods

A

Rankings, scale ranks, pairwise comparison

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11
Q

Estimating the utility values

How?

A

Based on the ranking data, partworth utilities are calculated for all attribute values by means of conjoint analysis

Partworth values by regr analysis
–> assumption: ranking values are equidistand –> metric

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12
Q

Aggregation of utility values

Only possible after what?

2 possibilities to generate aggregated results:

What to do when data is very heterogeneous?

A
  • comparison and aggregation of individual analysis is possible only after normalizing the calvulated part-worth utilities
  • -> common zero point and common scaling
  • 2 possibilities:
    1. individual analysis and aggregation of obtained partworth utilities
    2. common conjoint an. for several persons delivering aggregated partworth utilities
  • perform cluster analysis first
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