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The Psychology of Judgment

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Title: The Psychology of Judgment


1
The Psychology ofJudgment Decision Making
  • MIS 696A Readings in MIS (Nunamaker)
  • 05 November 2003
  • Cha / Correll / Diller / Gite / Kim / Liu /
    Zhong

2
SECTION IPerception, Memory Context
  • Hoon Cha Jeff Correll

3
Chapter 1Selective Perception
  • Hoon Cha

4
Define First and See?
  • People selectively perceive what they expect and
    hope to see

5
Examples
  • Any book which is published will have been read
    possibly hundreds of times, including by
    professional proof readers.
  • And yet grammatical and other errors still get
    into print. Why?
  • Because the mind is very kind and corrects the
    errors that our eyes see.

6
Lessons Learned
  • Before conducting your research and interpreting
    your results
  • Ask yourself what expectations you did bring into
    the situation?
  • Consult with others who dont share your
    expectations and motives

7
Chapter 2Cognitive Dissonance
8

Are you a sexist person?
  • People are motivated to reduce or avoid
    psychological inconsistencies.
  • Cognitive dissonance
  • People are in much the same position as an
    outside observer when making inferences.
  • Self-Perception

9
Examples
  • Smokers find all kinds of reasons to explain away
    their unhealthy habit.
  • The alternative is to feel a great deal of
    dissonance.

10
Lessons Learned
  • Change in behavior can influence change in
    attitude
  • During your research, get other people to commit
    themselves to own the object, then they will form
    more positive attitudes toward an object.
  • Use systems development as a research methodology

11
Chapter 3Memory Hindsight Biases
12
"I knew it all along "
  • Memory is reconstructive, not a storage chest in
    the brain.
  • Shattered memories
  • It can be embarrassing when things happen
    unexpectedly. People tend to view what has
    already happened as relatively inevitable and
    obvious.
  • Hindsight bias

13
Examples
  • Just before the election, people tend to be
    uncertain about who will win but, after the
    election, they tend to point to signs that they
    now say had indicated clearly to them which
    candidate was going to win.
  • In other words, they are likely to remember
    incorrectly that they had known all along who the
    winning candidate was going to be.

14
Lessons Learned
  • During your research, explicitly consider how
    past events might have turned out differently.
  • Keep in mind the value of keeping accurate notes
    and records of past events

15
Chapter 4Context Dependence
  • Jeff Correll

16
4 Illustrations of Context Effect
  • Contrast Effect
  • Primacy Effect
  • Recency Effect
  • Halo Effect

17
Contrast Effect
  • Examples
  • Experiment with 3 bowls of water
  • Sports announcer standing next to basketball
    players vs. horse jockeys
  • Only occurs among similar objects ex apparent
    size wont change if standing next to a large
    race horse (Ebbinghaus Illusion)

18
Primacy Effect
  • Characteristics appearing early in a list
    influence impressions more strongly than those
    appearing later Asch (1946)
  • The first entry is most important, but 2nd and
    3rd also show a primacy effect-Anderson(1965)
  • This effect also occurs in many other situations
    involving sequential information

19
Recency Effect
  • Sometimes the final presentation has more
    influence than the first
  • Which is stronger? it depends (Miller and
    Campbell study - 1959)
  • Hoch (1984) found similar results in human
    prediction experiments

20
Halo Effect
  • People cant treat an individual as a compound
    of separate qualities and rate these qualities
    independent of the others
  • Examples Army officer ratings, teacher
    evaluations, beauty halo, warm vs. cold,
    teacher expectations, etc.

21
Conclusion Context Dependence
  • Everything is context-dependent
  • Persuasion professionals exploit these effects
  • Includes us as MIS Researchers!
  • Contextual effects are limited

22
SECTION IIHow Questions Affect Answers
How the format of a problem can influence the way
people respond to it
  • Jeff Correll

23
Chapter 5Plasticity
  • Jeff Correll

24
Are you a gambler?
  • Same choice in a different context can lead to
    very different answers
  • A 100 chance of losing 50
  • B 25 chance lose 200, 75 nothing
  • Worded in sure loss language Risk-taking
  • Worded in insurance languageRisk-averse

25
Order Effects
  • Order of questions/alternatives also influence
    responses
  • Example Schuman and Pressers 1981 survey on
    freedom of the press
  • Recency effect is the most common response order
    effect
  • Example Survey question about divorce

26
Pseudo-Opinions
  • People will offer an opinion on a topic about
    which they have no real opinion
    (pseudo-opinion) 25 to 35
  • Multiple humorous examples
  • Common in issues involving foreign and military
    policy
  • Must be separated through filtering

27
Inconsistency
  • Discrepancy between two related attitudes
    (attitude-attitude) or an attitude and a
    corresponding behavior (attitude-behavior)
  • Attitude-attitude inconsistency Attitudes about
    abstract propositions are often unrelated to
    attitudes about specific applications of the same
    proposition!
  • Attitude-behavior inconsistency People can hold
    abstract opinions which have little or nothing to
    do with their actual behavior!

28
Inconsistency Continued
  • Ultimate example of attitude-behavior
    inconsistency Darley and Batsons 1973
    experiment on seminary students
  • Should we abandon the idea of attitudes
    altogether (Wicker)?
  • Revisionist attitude researchers say no -
    attitudes are consistent with behavior, provided
    certain conditions are met (Atzen et al 1977)

29
Conclusion Plasticity
  • Russian Proverb
  • Going through life is not so simple as crossing
    a field
  • Translation to Judgment and Decision-Making
  • Measuring an attitude, opinion, or preference
    is not so simple as asking a question
  • We as MIS researchers must pay close attention
    to the structure and context of our survey
    questions!

30
Chapter 6Effects of Wording Framing
  • Jeff Correll

31
Question Wording
  • Small changes in wording can equal big changes
    in how people answer
  • Example Does your countrys nuclear weapons
    make you feel safe? (40 yes, 50 no, 10 no
    opinion) vs. safer? (50 yes, 36 no, 14 no
    opinion)
  • Potential pitfalls in question wording
  • Forced Choice questions (no middle category)
  • Questions with a middle category
  • Open vs. Closed Questions - Schuman and Scott
    (1987)

32
Response Scales / Social Desirability / Allow vs.
Forbid
  • Differences in response scales also influence
    results (ex reported TV usage)
  • In the absence of a firm opinion on an issue,
    respondents typically cling to catch phrases
    that point them in a socially desirable direction
  • Are you for or against a freeze in nuclear
    weapons? (one question equated it with Russian
    nuclear superiority, the other with world
    peace)
  • Varying the words Allow and Forbid leads to very
    different responses (Rugg -1941)

33
Framing
  • People respond differently to losses than to
    gains (Tversky and Kahneman-1981)
  • A Sure gain of 240, or
  • B 25 chance to gain 1000, 75 chance to gain
    0
  • 84 chose A over B (people tend to be risk
    averse with gains)
  • C Sure loss of 750, or
  • D 75 chance to lose 1000, 25 chance to lose
    0
  • 87 chose D over C (people tend to be risk
    seeking w/losses)

34
Framing Continued
  • Interesting point A and D are chosen together
    73 of time, yet B and C together has a higher
    expected value outcome
  • Concept has similar application to Medical
    Decision Making
  • Asian Disease question (1981)
  • Lung cancer treatment decision experiment

35
Psychological Accounting
  • Decision makers also frame the outcomes of their
    choices
  • Main issue Is the outcome framed in terms of
    the direct consequences of an act (minimal
    account) or is it evaluated with respect to a
    previous balance (inclusive account)?
  • Price to see a play is 10. As you enter
    theatre, you realize youve lost a 10 bill.
    Would you still pay 10 for a ticket to the play?
    (88 said yes)
  • Same situation, but this time youve lost your
    10 ticket (which youve already paid for and
    cant replace). Would you pay 10 for another
    ticket? (only 46 said yes!)

36
Conclusion Question Wording and Framing
  • Can significantly affect how people respond
  • In our studies, we as MIS researchers must
    consider how respondents answers might have
    changed based on all of the previous factors
  • Furthermore, we should probably qualify
    interpretations of results until multiple
    variations in wording/framing can be tested
  • If multiple procedure results are consistent,
    there may be some basis for trusting the
    judgment otherwise further analysis required
    (Slovic, Griffin, and Tversky 1990)

37
SECTION IIIModels of Decision Making
  • Chris Diller

38
Chapter 7Expected Utility Theory
39
Classic Utility Theory
  • Example Self-Test Question 30
  • The "St. Petersburg Paradox"
  • Question initially posed by Nicolas Bernoulli
    (1713)
  • "Solution" provided by Daniel Bernoulli
    (1738/1754)

40
Expected Utility Theory
  • Expected Utility Theory
  • Developed by von Neumann Morganstern (1947)
  • The value of money DECLINES with the amount won
    (or already possessed)
  • Normative NOT descriptive!

41
Expected Utility Theory
  • "Rational Decision Making" Assumptions
  • Ordering Preferred alternatives or indifference
  • Dominance Alternative with better outcome(s)
  • "Weakly" dominant vs. "Strongly" dominant
  • Cancellation Ignore identical
    factors/consequences
  • Transitivity If A gt B and B gt C then A gt C
    !
  • Continuity Prefer gamble to sure thing (odds!)
  • Invariance Unaffected by way alt's are
    presented
  • A Major Paradigm with Many Extensions

42
Chapter 8Paradoxes in Rationality
43
The Allais Paradox
  • Example Self-Test Question 28
  • Maurice Allais (1953)
  • Showed how the Cancellation Principle is violated
  • The addition of equivalent consequences CAN lead
    people to make different (irrational?) choices

44
Ellsberg's Paradox
  • Daniel Ellsberg (1961)
  • Also showed how Cancellation Principle is
    violated
  • People to make different (irrational?) choices in
    order to avoid uncertain probabilities
  • Example Urn with 90 balls (R/B/Y)

45
Intransitivity
  • "Money Pump"
  • Decision makers with intransitive preferences
  • A lt B ? B lt C ? A gt C
  • Amos Tversky (1969)
  • Harvard study 1/3 of subjects displayed this!
  • "Committee Problem" Example
  • Choose between three applicants
  • Leader frames vote to avoid direct comparisons

46
Preference Reversals
  • Sarah Lichtenstein Paul Slovic (1971)
  • Preferences can be "reversed" depending upon how
    they are elicited
  • High payoff vs. High probability
  • Choosing between a PAIR of alternatives involves
    different psychological processes than bidding
    on a particular alternative separately
  • Exist even for experienced DMs in real life!
  • Example Study of Las Vegas bettors dealers

47
Conclusions
  • Violations of EUT are not always irrational!
  • Approximations simplify difficult decisions
  • Increase efficiency by reducing cognitive effort
  • Lead to decisions similar to optimal strategies
  • Assume that the world is NOT designed to take
    advantage of the approximation efforts utilized
  • A decision strategy that can not be defended as
    logical may be rational if it yields a quick
    approximation of a normative strategy that
    maximizes utility.

48
Chapter 9Descriptive Models of DM
49
Satisficing
  • Herb Simon Blows Up EUT (1956)
  • Simplifying assumptions make the problems
    tractable
  • DMs are assumed to have complete information
  • DMs are assumed to understand and USE this
    information
  • DMs are assumed to compare calculations
    maximize utility
  • Simon says People "satisfice" rather than
    optimize
  • "People often choose a path that satisfies their
    most important needs, even though the choice may
    not be ideal or optimal."
  • Humans' adaptive nature falls short of economic
    maximization

50
Prospect Theory
  • Daniel Kahneman Amos Tversky (1979)
  • Prospect Theory differs from EUT in two big ways
  • Replace "Utility" with "Value" (net wealth vs.
    gains/losses)
  • The value function for losses is different than
    the one for gains

51
Prospect Theory
  • George Quattrone Amos Tversky (1988)
  • Introduced notion of "loss aversion" its
    results
  • Political ramifications Incumbent re-elections
  • Commercial ramifications Bargaining
    negotiation
  • Personal ramifications "The Endowment Effect"
  • Losses are felt much more strongly than gains!

52
Prospect Theory's Certainty Effect
  • Amos Tversky Daniel Kahneman (1981)
  • Reductions in probability have variable impacts
  • Zeckhauser Russian Roulette 4 to 3 bullets vs.
    1 to 0 bullets
  • People would rather eliminate risk than just
    reduce it
  • Probabilistic Insurance Kahneman Tversky
    (1979)
  • Small probabilities often "overweighted,"
    inflating the importance of improbable events
  • Example Self-Test Question 23

53
Prospect Theory's Pseudocertainty
  • Amos Tversky Daniel Kahneman (1981)
  • Similar to Certainty Effect, this effect deals
    with apparent certainty rather than real
    certainty (Framing)
  • Slovic, Fischhoff, Lichtenstein (1982)
  • Example Vaccinations
  • People prefer the option that appeared to
    eliminate risk!
  • Other Examples Marketing Tactics
  • Buy two, get one FREE (preferred) versus 33
    off!

54
Regret Theory
  • Prospect Theory's Premise
  • Compare gains losses relative to a reference
    point
  • However, some compare imaginary outcomes!
  • "Counterfactual Reasoning"
  • Dunning Parpal (1989) The basis of Regret
    Theory
  • Compare decisions with what MIGHT have happened
  • Same as Prospect Theory's Risk Aversion but
  • "Regret variable" is added to the new utility
    function
  • Accounts for many previously-mentioned paradoxes

55
Multi-Attribute Choice
  • Einhorn Hogarth (1981)
  • Consistency of goals/values, not objective
    optimality
  • Research HOW (not how well) decisions are made
  • Compensatory Strategies (John Payne, 1982)
  • Used primarily for simple choices, few
    alternatives
  • Trade off low high values on different
    dimensions
  • Linear Model (All attributes weighted ? index
    score)
  • Additive Differences Model (Only the different
    attributes weighted)
  • Ideal Point Model (Evaluate attributes on their
    distance from the ideal)

56
Noncompensatory Strategies
  • R.M. Hogarth (1987)
  • Used primarily for complex choices, many
    alternatives
  • These do NOT allow for making trade-offs!
  • Most well-known examples include
  • Conjunctive Rule (Satisficing! Criterion ranges
    ? acceptance/rejection)
  • Disjunctive Rule (Each alternative is measured
    by its BEST attribute)
  • Lexicographic Strategy (Step-wise evaluation of
    attributes ? superior)
  • Elimination-By-Aspects (Step-wise evaluation of
    attributes ? inferior)

57
The More Important Dimension
  • Slovic (1975)
  • "Given a choice between two equally-valued
    alternatives, people tend to choose the
    alternative that is superior on the more
    important dimension."
  • Example Baseball players' statistics
  • Results indicate that people DO NOT choose
    randomly!

58
Applications to MIS Academia
  • Normative vs. Descriptive Approaches
  • Importance of Framing
  • Understanding "Rationality" in DM
  • Departmental budget "battles"
  • Competition for research funding
  • Analysis of technology adoption
  • Personnel decisions
  • Selling "transitioned" research products/tools

59
Break
60
SECTION IVHeuristics Biases
  • Sanghu Gite, Iljoo Kim Jun Liu

61
Heuristics and Biases
  • Sanghmitra Gite

62
He loves mehe loves me not
HOW?
WHY?
WHICH?
IF?
WHEN?
WHERE?
63
Heuristics or Hueristics?
Tversky and Kahneman When people are faced
with a complicated decision, they often simplify
the task by relying on heuristics,In many cases,
these shortcuts yield very close approximations
to the optimal In certain situations, though,
heuristics lead to predictable biases and
inconsistencies.
General Rules of Thumb
Fairly good estimate
Reduce time and effort
Leads to predictable biases
64
The Representativeness Heuristic
Tversky and Kahneman People often judge
probabilities by the degree to which A resembles
B.
As the amount of detail in a scenario increases,
its probability can only decrease steadily, but
its representativeness and hence its apparent
likelihood may increase.
  • Example 1 Linda is 31 years old, single,
    outspoken, and very bright. She majored in
    philosophy. As a student, she was deeply
    concerned with issues of discrimination and
    social justice, and also participated in
    antinuclear demonstrations. Which is most likely?
  • Linda is a bank teller.
  • Linda is a bank teller and is active in the
    feminist movement
  • Example 2 Which of the scenarios is more
    likely?
  • Scenario 1 An all-out nuclear war between the
    United States and Russia
  • Scenario 2 a situation in which neither country
    intends to attack the other side with nuclear
    weapons but an all-out nuclear war between the
    U.S. and Russia is triggered by the actions of a
    third country such as Iraq, Libya or Pakistan.

Dont be misled by highly detailed scenarios!
65
The Law of Small Numbers
The Author says ...a belief that random
samples of a population will resemble each other
and the population more closely than statistical
sampling theory would predict.
  • Examples
  • Gamblers fallacy
  • the belief that a successful outcome is due
    after a run of bad luck
  • The Hot Hand
  • a streak shooter in basketball or an athelete
    on a roll
  • Tversky and Kahneman
  • tendency to view chance as self correcting is a
    bias resulting from the representativeness
    heuristic, because samples are expected to be
    highly representative of their parent population.

Remember that chance is not self-correcting!
66
Neglecting Base Rates
The author says In some instances, a reliance
on representativeness leads people to ignore base
rate information ( the relative frequency with
which an event occurs)
  • Example
  • More description tends to ignore base rates

Whenever possible, pay attention to base rates
67
Nonregressive Prediction
  • Regression to the mean is the phenomena in
    which high or low scores tend to be followed by
    more average scoresThe tendency to overlook
    regression leads to critical errors of judgment.
  • Examples
  • Baseball Magic
  • Sports Illustrated Jinx
  • Nisbett and Ross
  • measures designed to stem a crisis ( sudden
    increase in crime, diseaseor a sudden decrease
    in sales, rainfall, or Olympic gold medal
    winners) will, on the average, seem to have
    greater impact than there actually has been

Dont misinterpret regression toward the mean
68
The Availability Heuristic
  • Tversky and Kahneman
  • Assess the frequency of a class or the
    probability of an event by the ease with which
    instances or occurrences can be brought to mind.
  • Example Which is a more likely cause of death in
    the U.S. being killed by falling airplane parts
    or sharks?
  • The Author notes that
  • Some events are more available than others not
    because they tend to occur frequently or with
    high probability, but because they are inherently
    easier to think about, because they have taken
    place recently, because they are highly
    emotional, and so forth.
  • Main questions
  • What are the instances in which availability
    heuristic leads to biased judgments?
  • Do decision makers perceive an event as more
    likely after they have imagined it
    happening?
  • How is vivid information different from any
    other information?

69
The Limits of Imagination
  • Availability is a misleading indicator of
    frequency
  • Biased judgments when examples of one event are
    inherently more difficult to generate than
    examples of another event.
  • availability is linked with the act of imagining
    an event
  • Extremely negative outcomes
  • Vividness
  • refers to how concrete or imaginable something
    is?
  • The Legal Significance of Guacamole the power
    of vividness
  • but beware !
  • The important thing
  • explicitly compare over- and underestimated
    dangers with threats that are misperceived in the
    opposite directions.

70
Probability and Risk
  • The Game show problem
  • Conditional Probability
  • Bayes Theorem Probability of an event, given
    some evidence of a relevant event
  • P(A/B) P(A) . P(B/A)
  • -------------------
  • P(B)
  • Itll never happen to meor will it?
  • The degree to which an outcome is viewed as
    positive or negative
  • positive outcomes viewed as more probable than
    negative outcomes

71
Compound Events
URN 1 2 colored marbles and 18 white marbles
URN 2 10 colored marbles and 10 white marbles
  • Example
  • choose between
  • simple bets e.g. drawing a colored marble
    randomly from urn 1
  • Compound bets e.g. consecutively drawing 4
    colored marbles from urn 2 (replacing marbles
    after each drawing)
  • Reliance of outcome on multiple events
  • decision makers tend to get anchored or stuck
    on the probabilities of the simple events
    making up the compound event

72
Conservatism and the Perception of Risk
The author says - once people have formed a
probability, estimate, they are often quite slow
to change the estimate when presented with new
information Stone Yates - Perception are
highly subjective, and the value people on
preventive behaviors depends in part upon the way
a particular risk is presented and the type of
risk it is. Risk perception is extremely
important but often complicated. Do Accidents
Make Us Safer? Perceptions of risk are strongly
biased in the direction of preexisting views
73
Take away this
  • Maintain accurate records
  • Beware of wishful thinking
  • Break compound events into simple events
  • Importance in Your research
  • Use heuristics and probability measures carefully
  • Be aware of biases arising from each type of
    heuristic
  • Apply corrective measures to your data to undo
    the effect of biases
  • Dont let your desire for accuracy sway you
    towards inaccurate data

74
Chapter 13Anchoring Adjustment
To reach a port, we must sail sail, not tie at
anchor sail, not drift. Franklin Delano
Roosevelt
  • Iljoo Kim

75
Anchoring and Adjustment
  • The insufficient adjustment up or down from an
    original starting value, or anchor
  • Ex) Number estimates after a spin
  • Anchoring is a robust phenomenon in which the
    size of the effect grows with the discrepancy
    between the anchor and the pre-anchor estimate.

76
What I really mean is?
  • Arbitrary numerical references may have
    unintended effects
  • - Would you support a U.S. attempt to build a
    defensive system against nuclear missiles and
    bombers if it were able to shoot down 90 of all
    Soviet nuclear missiles and bombers?
  • - A defense that can protect against 99 of the
    Soviet nuclear arsenal may be judged as not good
    enough, given the destructive potential of the
    weapons that could survive

77
Power in a real-world
  • Real Estate Agents Case
  • - All agents given different figures about same
    information (e.g., info. about nearby properties)
  • - Significant evidence of anchoring shown
  • What we can see
  • - Experts are not immune to it
  • - Hard to realize
  • - Powerful in real world

78
Things we learned
  • Try to be free from the previous results or the
    existing perception
  • Be aware of any suggested values that seem
    unusually high or low
  • Generate an alternate anchor value that is
    equally extreme in the opposite direction
  • Realize that a discussion of best- or worst-case
    scenarios can lead to unintended anchoring
    effects
  • Worth considering multiple anchors before making
    final estimate

79
Chapter 14The Perception of Randomness
80
Ch. 14 The Perception of Randomness
  • There are Coincidences out there
  • People tend to see patterns in the randomness
  • Which one is randomly selected?
  • wwbbbwbwbbwbwww / wbwbwbwwbbwbwbw
  • People saw randomness when there was actually a
    pattern, and saw patterns when the sequence was
    actually random

81
Things we learned
  • Decision makers have a tendency to over-interpret
    chance events
  • Researchers should resist the temptation to view
    short runs of the same outcome as meaningful
    Distinguish between a pattern and a coincidence!
  • Try! Try! And Try!

82
Chapter 15Correlation, Causation Control
83
Ch 15. Correlation, Causation, and Control
  • Correlation Assessments are not easy (Survey 14)

84
Illusory Correlation
  • The mistaken impression that two unrelated
    variables are correlated
  • e.g., Draw-A-Person test
  • Hard to eliminate
  • Usually from Stereotype, Longtime Perception
    Availability Explanation / Representativeness
    theory

85
Invisible Correlations
  • Failing to see a correlation that does exist
  • Difficult to detect in frequency
  • Usually from the absence of an expectation
  • e.g., correlation between smoking and lung
    cancer

86
Causation
  • Correlation ! Causation
  • Just as correlation need not imply a causal
    connection, causation need not imply a strong
    correlation
  • Illusion of Control
  • Belief of having more control over chance
    outcomes
  • from Illusory Correlation and Causation

87
Things we learned
  • Researchers should focus on more than confirming
    and positive cases of a relationship
  • Take away biases
  • Judgments from Observation or Expectation?
  • Remember,
  • Correlation ! Causation

88
SECTION VThe Social Side
  • Jun Liu

89
Chapter 17Social Influences
90
Social Facilitation
  • What change in an individuals normal performance
    occurs when other people are present?
  • - Performance of simple, well-learned
    responses is enhanced while the performance of
    complex, unmastered skills tends to be impaired.

  • VS.

91
Social Loafing Bystander Intervention
  • People do not work as hard in groups as they work
    alone.
  • Decision to intervene is heavily influenced by
    the presence of others.
  • Possible cause diffusion of responsibility

92
Social Comparison Theory
  • People evaluate their opinion and abilities by
    comparing themselves with others.
  • People tend to take cues from those who are
    similar
  • Social analgesia social comparisons can
    influence perceptions.

93
Lessons Learned Three monks story
94
New version of three monks story
  • Conclusion
  • - Diffusion of responsibility leads to group
    failures
  • - Explicitly assign responsibility to group
    members

95
Chapter 18Group Judgments Decisions
96
Group Errors and Biases
  • Group-serving bias group members make
    dispositional attributions for group successes
    and situational attributions for group failures
  • Outgroup homogeneity bias groups perceive
    their own members as more varied than members of
    other groups.

97
Are several heads better than one?
  • Groups usually perform somewhat better than
    average individuals
  • Groups performs worse than the best individual in
    a statistical aggregate of people
  • Brainstorming is most effective when conducted by
    several people independently rather than in a
    group session

98
The Benefits of Dictatorship
  • The best member of a group often outperforms the
    group
  • The dictatorship technique outperforms other
    types of decision techniques (consensus,
    delphi, collective, etc.)
  • An good leader encourages all members to express
    an opinion

99
Lessons learned
  • Three cobblers with their wits combined equal
    Zhuge Liang the master mind.
  • It is more important to put heads together
  • Implications to MIS Researchers

100
SECTION VICommon Traps
  • Mike Zhong

101
Chapter 19Overconfidence
102
Overconfidence
  • Example
  • Attack on Pearl Harbor
  • Columbia Challenger disasters (The estimated
    launch risk was 1 catastrophic failure in 100,000
    launches equivalent to launching a shuttle once
    per day and expecting to see only one accident in
    three centuries)

103
Overconfidence
  • Description
  • Occurring when a subjects confidence in the
    estimated accuracy surpasses the real accuracy.
  • Correlation between overconfidence and accuracy

104
Overconfidence
  • Overconfidence in Research

Literature review
Information increased
Accuracy didnt increased accordingly
Confidence increased
Overconfidence
105
Overconfidence
  • Remedy
  • Extensive literature review is not enough itself
  • stop to consider reasons why your judgment might
    be wrong
  • because of the subjects confirmation bias,
    opinions from other researchers are valuable.

106
Confirmation Bias
  • Example
  • Have we bought a bargain?

Its a real bargain !
107
Confirmation Bias
  • Confirmation Bias in Research
  • Focusing on things which will confirm our new
    ideas or hypothesis, while ignoring the negative
    sides.
  • Remedy
  • Negative testing strategy
  • Are all insects have 6 legs?

108
Chapter 20Self-Fulfilling Prophecies
109
Self-fulfilling Prophecies
  • Example
  • Robert Rosenthal and Lenore Jacobson s test,
    1968.This is also known as the Pygmalion Effect.
  • Description
  • The self-fulfilling prophecy is, in the
    beginning, a false definition of the situation
    evoking a new behavior which makes the originally
    false conception come true

110
Self-fulfilling Prophecies
  • Using it
  • Affecting a persons behavior.
  • Defending
  • Questioning their assumptions about you if you do
    not wish to be pushed in this direction.

111
Chapter 21Behavioral Traps
112
Behavioral Traps
  • Description
  • A course of action appears to be promising when
    embarked on, but later becomes undesirable and
    difficult to escape from.
  • Traps Counter-traps

113
Behavioral Traps
  • Taxonomy
  • Time delay traps (short-term vs long-term)
  • Ignorance traps (unforeseen negative effects)
  • Investment traps (sunk cost effects)
  • Deterioration traps (changing benefits and cost)
  • Collective traps (self-interests leads to
    negative consequences for whole)

114
Behavioral Traps
  • Avoiding behavioral traps in MIS Research
  • To avoid time delay traps, balance short-term and
    long-term goals ( design vs implementation)
  • To avoid ignorance traps, conduct comprehensive
    literature review before plunge into research
    work.
  • To avoid collective traps, do not always depend
    on others in group research/work, do as good as
    you can when working alone.

115
Summary / Key Take-Aways
  • Changes in behavior can influence change in
    attitude
  • Framing of questions/alternatives is important
  • Understand the rationality of DM (e.g.
    satisficing)
  • Be aware of biases arising from heuristics
    apply corrective measures!
  • Dont over-interpret chance events
    distinguish between patterns and coincidence!
  • The superior performance of groups is a function
    of not only having more heads than one but
    of putting those heads together!
  • Avoid time-delay traps balance S-T and L-T
    goals!
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