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Assertions, assumptions and predictions

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Title: Assertions, assumptions and predictions


1
Assertions, assumptions and predictions
  • Applications to scientific method discussion

2
Theory and reality
  • Theories capture logical links between aspects of
    reality
  • Ceteris paribus assumption is important in
    theories but data for testing theories violate
    ceteris paribus assumption
  • Smith a general discussion auxiliary
    hypotheses
  • Cox example of joint tests and confounds,
    example of non-standard objective functions
  • McDaniel and Rutström non-standard objective
    function, inferring unobservable processes from
    observable actions
  • Cummings, Harrison, and Rutström do theories
    speak to hypothetical circumstances?

3
Theory, Experiments and Economics Vernon Smith
  • Nobel 2002
  • Economics is theory intensive more than
    observation intensive
  • An a priori science
  • Field data tests are composite tests of all
    assertions and assumptions of the theory jointly
  • CETERIS PARIBUS assumption
  • If theory fails (is rejected) we dont know which
    element is incorrect

4
Field observations
  • Natural experiments
  • Ceteris paribus assumption is implemented to
    greater extent
  • Less common in economics than in natural sciences
  • Data normally collected by government agencies
    for other purposes than theory testing
  • Exceptions exist
  • Deal or No Deal game show

5
Elements of a theory
  • What is being tested
  • Environment
  • agents characteristics preferences, technology,
    endowments
  • Institution
  • Rules, terms and conditions for contact between
    elements of demand and supply
  • Behavior
  • Optimization, common knowledge, common
    expectations, risk attitudes

6
Beauty of laboratory experiments
  • Control the environment
  • Inducing values and costs
  • Control the institution
  • Defining and enforcing the trading rules
  • Test the theorys assertion of optimization

7
Example Double Auctions and Pit Markets
  • Theory based on downward sloping demand and
    upward sloping supply curves
  • Predicts P and Q based on QdQs
  • Experiments
  • Chamberlin prices did not converge to
    equilibrium and varied a lot across contracts
  • Smith prices converge to equilibrium over time
    and variance becomes small

8
Why different findings
  • Common elements in experimental design
  • Many buyers and sellers
  • Homogeneous goods
  • Induced values and costs
  • Differences

9
Differences
  • Chamberlin
  • allowed traders to walk around and make deals
  • No public information on the terms of the
    contracts
  • Traders tended to cluster (presumably to minimize
    information search cost)
  • Smith
  • Central clearing house of contracts
  • Public information on the terms of each contract

10
If testing using field data
  • May not be able to observe the institutional
    details that generate the differences
  • Ceteris paribus
  • Institutional details are the same

11
Institutions matter
  • Theory should pay more attention to institutions
  • The rules of interactions information flow,
    message space
  • The rules of contract enforcement
  • Perfect competition theory price taking buyers
    and sellers
  • Experimental finding price taking AND price
    making

12
Rationality and anomalies
  • Sometimes anomalies have been used to declare the
    death of rationality as an assumption in theory
    of choice
  • Rationality is based on a small set of very
    attractive axioms
  • Agents can compare things at least bilaterally
    and rank things in a consistent manner
  • Agents can choose
  • If agents are not rational can we even model
    them?

13
The most productive knowledge building attitude
is to be skeptical of both the theory and the
evidence. This is likely to cause you to seek
improvements in both the theory and the methods
of testing.
  • Smith p 800

14
How to identify trust and reciprocity
  • James C. Cox, Games and Economic Behavior, 2003

15
  • Alternative assertions and specifications of
    objective functions
  • Include psychological or social values
  • Confounds in empirical tests

16
Testing assertions joint tests and confounds
  • Standard choice theory
  • Utility maximization over consumption of goods or
    over income or wealth
  • Behavioral extensions
  • Psychological values and social preferences
  • Utility arguments include other peoples utility
    or income, consumption, wealth
  • Social norms
  • Trust and Reciprocity

17
The investment game
  • 2 person game Investor and contractor
  • Investor cannot enforce rate of return payment
    from contractor
  • Incomplete contracts
  • Investor and contractor both get 10
  • Investor can send some of that to contractor
  • Money sent triples (this is the return on the
    investment)
  • Contractor can send some back or not no
    penalties

18
Predictions
  • Standard assertion of utility maximization
  • Contractor will never return any money
  • So investor will never send
  • Alternative assertion 1 Trust and Reciprocity
  • Recognition of efficiency gain if investor trusts
    and contractor reciprocates
  • Alternative assertion 2 Equity preferences
    altruism
  • Investor beliefs that contractor has inequality
    averse preferences

19
Confounding influences
  • Observations of sending and returning are not
    proof of Trust and Reciprocity
  • Confounded by the possibility that preferences
    reflect inequality aversion
  • Triadic game structure to test this
  • Remove incentives to trust and test if giving
    still occurs
  • Remove incentives to reciprocate and test if
    returning still occurs
  • Finds evidence of both

20
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21
Decision Making Costs and Problem Solving
Performance
  • McDaniel and Rutström, Experimental Economics 2001

22
  • Alternative assertions
  • Costly rationality
  • Distractions and externalities in decision process

23
Incentives and utility maximization
  • Classical utility maximization
  • Perfect rationality no decision costs or
    decision errors
  • Costly rationality - cognitive production
    function
  • Many different ways to model decision errors
  • Stochastic noise terms on utility evaluation
  • Stochastic noise term on expression of final
    choice

24
Cognitive Production Functions
  • Mental resources and time enters decision making
  • Extrinsic rewards monetary rewards
  • Motivational factor
  • Positive incentives make decisions better
  • Costly rationality hypothesis

25
Detrimental rewards
  • Intrinsic rewards internal psychological
    evaluations
  • Motivational factor
  • Extrinsic and intrinsic motivation may be
    dependent
  • Introducing extrinsic rewards when intrinsic
    reward is already high
  • Detrimental effect on performance
  • Extrinsic/intrinsic trade-off hypothesis

26
Homegrown Values and Hypothetical Surveys Is the
Dichotomous Choice Approach Incentive-Compatible?
  • Cummings, Harrison, and Rutström, American
    Economic Review 1995

27
  • Do our theories predict behavior in hypothetical
    situations
  • Can we study behavior using surveys of intentions?

28
Contingent Valuation Method
  • Questionnaire instrument to ascertain how people
    value public goods or bads
  • Cannot use market price information since markets
    do not exist
  • Dichotomous choice Take it or leave it offer
  • Would you favor a policy that requires higher
    smoke stacks on coal burning generation
    facilities if it implies a 10 increase in your
    annual federal income tax?

29
Hypothetical incentives
  • Respondents are in a hypothetical situation
  • They will not have to take the consequences of
    their decisions
  • This experiment tests for hypothetical response
    bias in valuation of
  • Calculators
  • Chocolates
  • Citrus juicers

30
  • Proportion of yes responses significantly higher
    in hypothetical setting
  • 41 16 for juicers
  • 42 4 for chocolates
  • 21 8 for calculators
  • Did the preferences change?
  • Or did the opportunities change?

31
Conclusion
  • Dont be fooled by the simplicity of theory
  • Reality is very messy and hard to understand
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