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Representativeness and Availability Kahneman

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Title: Representativeness and Availability Kahneman


1
Representativeness and AvailabilityKahneman
Tversky
  • Umut Öztürk

2
RepresentativenessDefinition
  • - Assessing the likelihood of an events
    occurrence by the similarity of that occurrence
    to stereotypes of similar occurrences.
  • - The more X is similar to Y, the more likely we
    think X belongs to Y.

3
Insensitivity to Sample Size
  • The size of a sample greatly affects the
    likelihood of obtaining certain results in it.
  • People, however, often ignore sample size and
    only use the superficial similarity measures.
  • For example, people ignore the fact that larger
    samples are less likely to deviate from the mean
    rather than smaller samples.

4
Misconception of Chance
  • People expect that random sequences are
    representative even in small samples.
  • - E.g. they consider a coin-toss run of HTHTHT to
    be more likely than HHHTTT or HHHHTH
  • Gamblers fallacy A deviation from a stable
    equilibrium generates a force that restores the
    equilibrium. (misconception of the fairness of
    the laws of chance)
  • The laws of chance Deviations are not canceled
    as sampling proceeds, they are only diluted.

5
Misconception of Chance
  • E.g. After a run of reds in a roulette, black
    will make the overall run more representative
    (self correcting process?)
  • Even experienced research psychologists believe
    in a law of small numbers (small samples are
    representative of the population they are drawn
    from)

6
Example on Gamblers Fallacy
  • The mean IQ of the 8th graders in a city 100
    (known)
  • Random sample of 50 students
  • The first students IQ150
  • Expected mean IQ for the sample?
  • Correct Answer 101
  • Answer for large number of people100
  • Why? Belief in self-correction

7
Insensitivity to Prior Probabilities
  • The base(population) rate of outcomes should be a
    major factor in estimating their frequency.
    However, people often ignore it.
  • Bayes Theorem When we make a decision, we should
    take the prior probabilites into account unless
    we are absolutely certain about the decision.
  • Is Representativeness Heuristic in accordance
    with Bayes Theorem?

8
What is Toms Major
  • High intelligence
  • Need for order
  • Neatness
  • Dull and mechanical writing
  • Little sympathy for other people
  • Not enjoying interacting with others
  • Self centered
  • Deep moral sense

9
Graduate Mean Mean
Specialization judged base similarity
area   rate (in ) rank

Business 15 3,9
Administration
IT 7 2,1
Engineering 9 2,9
Humanities 20 7,2
Law 9 5,9
Library Science 3 4,2
Medicine 8 5,9
Physical Sciences 12 4,5
Social Sciences 17 8,2
10
What is Toms Major
  • Kahneman Tverskys questions
  • - What percentage of people in different
    majors?
  • - How similar is Tom to each major?
  • More than 95 of the respondents jugded that
    Tom is more likely to study IT than humanities,
    although they were surely aware of the fact that
    there are many more graduate students in the
    latter field. (ignoring the base rates)

11
Conjuctive Fallacy
  • A B can not be more probable than just A or B.
  • Example Sarah is 40 - single, outspoken and
    bright. She majored in philosophy and was
    interested in social equality as a student.
  • Is Sarah
  • a) a sales representative or
  • b) a sales representative who is active in
    feminist movement?

12
How to AVOID representativeness bias?
  • Dont be misled by detailed scenarios.
  • Pay attention to the base rates.
  • Dont forget the Gamblers fallacy. (chance is
    not self-correcting)
  • Seperate representativeness from probability.

13
Availability Heuristic
  • Availability involves...
  • Assessing the frequency, probability, or likely
    causes of an event based on the degree to which
    occurrences of the event are readily available in
    memory.
  • - People inadvertently assume that readily
    available instances, examples or images represent
    unbiased estimates of statistical probabilities.

14
Availability BiasesEase of Retrievability
  • Samples whose instances are more easily
    retrievable from memory will seem larger.
  • For example, judging if a list of names had
    more men or women depends on the relative
    frequency of famous names.

15
ExampleList of Names
  • Read the list once.
  • Michael Jordan
  • Sandra Grey
  • Barbara Walters
  • Maria Schulz
  • George Bush
  • Kim Melcher
  • Indira Gandi
  • Jack Smith
  • Madonna
  • Gill Williams

16
ExampleList of Names
  • Are there more men or women on the list?
  • Judging if the list of names has more men or
    women depends on the relative frequency of famous
    names.

17
Experience Antecedent of Availability Bias
  • A successful executive who attended Yale is
    likely to remember fellow alums he encounters in
    his business circle and his social life. Because
    of his special, circumscribed range of
    experiences he is likely to overestimate the
    relative proportion of successful Yale graduates.
  • Thus, range of experiences can cause the
    availability bias.

18
Salience Antecedent of Availability Bias
  • Unemployed executives are likely to overestimate
    unemployment among executives, whereas employed
    executives are likely to underestimate
    unemployment among executives. For each
    executive, employment estimates are biased by the
    vivid salience of their personal situation.
  • Vivid salience can cause the availability bias.

19
Ease of Recall
  • Events more easily recalled from memory, based
    upon recency, are regarded to be more numerous.
  • Ex Managers appraisals of employees
  • Ex Watching an accident
  • Ex Loud repeated advertising

20
Effectiveness of a Search Set
  • We often form mental search sets to estimate how
    frequent some occurrences are. However, the
    effectiveness of the search might not relate
    directly to the real frequency.

21
Effectiveness of a Search Set
  • Consider the letters K,L,R,N,V.
  • Are they more likely to appear in
  • - the first position?
  • - the third position?
  • Result Among the 152 subjects, 105 judged
    the first position to be more likely for a
    majority of the letters, even though in reality
    the third position is more frequent.

22
Ease of Imaginability
  • The difficulty of imagining instances is used as
    an estimate of their frequency.
  • - E.g. number of combinations of 2 out of 9
    people, versus 7 out of 9 people.
  • - Number of combinations of 2 people is seen
    more at first glance, it is more disctinctive and
    easier to visualize, even though the number of
    both combinations is the same.
  • Thus, imaginability might cause overestimation
    of likelihood of vivid scenarios, and
    underestimation of the likelihood of difficult to
    imagine ones.

23
Example
  • Estimate the result of the following operation
    within 5 seconds!
  • One group (87 people) is given 8x7x6x5x4x3x2x1
  • The other group (114 people) is given
  • 1x2x3x4x5x6x7x8
  • The median estimates
  • 2250 for the first group and 512 for the
    second one. The correct value 40320

24
Example
  • Why?
  • Because the results of the first steps of
    multiplication are larger in the descending
    sequence than in the ascending one, the former
    expression is judged larger than the latter.
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