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Title: Exploring Market Structures with Zero-Intelligence Agents


1
Exploring Market Structures with
Zero-Intelligence Agents
  • Shyam Sunder, Yale University
  • Eighth Trento Summer School
  • Intensive Course in Agent-Based Finance
  • July 5-6, 2007

2
Humanities and Science
  • Science does not know its debt to imagination.
    Ralph Waldo Emerson
  • Vivisection is a social evil because if it
    advances human knowledge, it does so at the
    expense of human character. George
    Bernard Shaw
  • The theoretical broadening which comes from
    having many humanities subjects on the campus is
    offset by the general dopiness of the people who
    study these things. Richard P. Feynman
  • Economics is more complicated than physics.
    Benoit Mandelbrot
  • Economics has an amazing capacity to summarize
    staggeringly complex phenomena by the application
    of only a handful of principles. Charles R.
    Plott
  • Being outside and above local contingencies,
    collective consciousness sees things only in
    their permanent and fundamental aspects, which it
    crystallizes in ideas that can be communicated.
    Emile Durkheim

3
An Overview
  • Origins of experimental economics in exploration
    of aggregate phenomena
  • Progressive shift to micro-level phenomena
  • This shift accentuates the dilemma of social
    sciences between science and humanities
  • A three-way classification of experimental work
  • Aggregate phenomena can fit into science
  • Examples ZI, structural market games
  • Evolution, biology, sub-optimality and free-will

4
Overview
  • Origin of experimental economics in examination
    of aggregate phenomena
  • Gradual, steady shift towards study of
    micro-level phenomena due to
  • Analytical process and reasoning
  • Incremental research questions
  • Unlike assumption in theory, people do not
    optimize well by intuition
  • Today, much experimental work has shifted to
    examination of individual behavior and of
    economies populated by artificial agents
  • Shift to individual behavior has accentuated the
    ever-present dilemma of social sciences in trying
    to be a science on one hand, and handle humans at
    the same time
  • What are the antecedents and consequences of this
    trend?
  • Usefulness of organizing experimental economics
    into three streams
  • Structural macro properties of social structures
  • Behavioral behavior of individuals, and
  • Agent-based exploration of links between the
    micro and macro phenomena
  • At least the structural part of economics can be
    firmly rooted in the tradition of sciences,
    bypassing the free-will dilemma of social sciences

5
Examining Market Institutions
  • Chamberlin (1948) examined the behavior of a
    market institution under controlled conditions of
    his classroom
  • Vernon Smith (1962), a subject of Chamberlin)
    redesigned and systematically varied the market
    conditions to examine price, allocation, and
    extraction of surplus
  • Both designs deviated significantly from
    Walrasian tatonnement abstraction they fleshed
    them out with details, using stock market as a
    guide
  • Economic environment (market demand and supply)
    and market design as independent variables
  • Market level outcomes as dependent variables

6
Data from Experiments
  • Experiments can yield a great deal of data
  • Data are limited only by interest and imagination
    of the experimenter, and ingenuity in capturing
    data without distracting subjects from their task
    in a significant way
  • Chamberlin gathered three pieces of data for each
    transaction (price, seller cost and buyer value),
    and the transaction sequence
  • Some examples of data he did not gather the
    clock time of transactions, details of the
    bargaining process (time elapsed, price
    proposals, number of proposals, number of
    counter-parties bargained with), etc.

7
Data to Meet Experimental Goals
  • Most experiments can yield a great deal of data
  • We gather only what we need in order to address
    the question(s) we wish to answer on the basis of
    the experiment
  • Constraints
  • Technology of data gathering, eased by
    development of computer technology to conduct
    economics experiments)
  • The possibility of interaction between data
    capture and subjects
  • Given Chamberlins goals, asking subjects to
    report their transactions immediately after they
    completed each transaction served his purposes
    well, causing little interference with subjects
    trading

8
Shift Towards Micro Phenomena
  • Focus of experimental economics work is gradually
    shifting from aggregate market or institution
    level phenomena towards individual behavior
  • Three factors appear to drive this shift
  • The logic of analytical method
  • Incremental nature of research designs
  • Empirical finding that people, acting by
    intuition alone, are not good at optimization as
    typically assumed in derivation of equilibria in
    economic theory

9
1. Logic of Analytical Method
  • It is rare for the correspondence between the
    predictions of the theory of interest, and
    experimental data, to be either complete or
    totally absent
  • If the experimenter has no, or low, expectation
    of correspondence between the two, observation
    of even a moderate relationship is seen as half
    full glass of water
  • However, most experiments are designed to examine
    specific theories that have some legitimate prior
    claim to predictive power
  • Conducting experiments where no predictive power
    is expected is simply too wasteful
  • By definition, theories are simple models
    designed to capture some general tendency,
    without claim to perfect explanation of the
    phenomenon of interest

10
Logic of Analytical Method
  • Before data are gathered and examined, few
    theories inform us of the extent of their
    explanatory power (which must be estimated from
    the data from the field or lab)
  • Accordingly, any imperfections of correspondence
    between data and theory tends to be seen as half
    empty, not half full, glass of water
  • Seeking a fuller explanation to close the gap
    between data and theory is a natural instinctive
    reaction of most of us investigators

11
Search for Higher Explanatory Power
  • Following this logic, analysis and discussion of
    most experiments ends in a search for ways to
    increase the correspondence (e.g., R-square)
    between data and theory
  • Better prediction and explanation is the currency
    of scientific progress
  • We look for ways to modify the model to enhance
    its explanatory power through analysisbreaking
    the problem down into progressively smaller
    components
  • This logical pursuit shifts research question(s)
    to the next level of detail causing
    micro-nization of economics
  • Analysis dominates
  • Synthesis (discarding chosen details, to step
    back and see the big picture) is a much less
    common reaction to data

12
Example Demand, Supply and Experiments
  • Simple economic theory point of intersection of
    demand and supply determines price and
    allocations
  • Economists long-held deep faith in theory with
    sparse empirical support
  • Neither Chamberlins nor Smiths data
    corresponded precisely to the theory
  • Chamberlin none of the 19 transactions occurred
    at the equilibrium price of 57 average price of
    52 was considerably lower
  • Smith the first transaction at equilibrium
    occurred in the later part of the third
    repetition
  • Thus neither experiment yielded results that
    corresponded to the predictions of the Walrasian
    tatonnement
  • In fact neither was conducted as a Walrasian
    tatonnement (which is an important point to which
    I shall return later talk)

13
Chamberlin (1948), Figure 3
14
Smith (1962) Chart 1
15
Different Reactions to Results
  • Two distinguished economists reacted to their
    results very differently
  • Smith saw half full glass of water, and
    interpreted the results as first empirical
    evidence in favor of significant explanatory
    power of the simple demand-supply model
  • Chamberlin saw the half empty part and set out to
    build a model to better explain the residual
    variation left unexplained by the simple
    demand-supply model (instantaneous demand/supply)
  • Dominance of analytical (instead of abstraction)
    tendency helps propel experimental research
    towards examination of increasingly finer details

16
2. Incremental Research Designs
  • A good part of our research (including
    experimental) is incremental, originating in
    proposals to
  • Capture some additional uncontrolled variation in
    the underlying conditions to explain any
    deviation of data from theory
  • Gather data about some additional aspect of
    behavior, or additional analysis of existing data
  • Measure sensitivity of behavior to some
    additional controlled variations in underlying
    conditions
  • We make conjectures about how such data or
    analysis might help explain some part of residual
    variation
  • Incremental work dominates graduate seminars
    focused on critique and replication of extant
    work
  • Easy to think of additional observations,
    motivations, and information conditions
    associated with individual participants to
    improve the fit between data and model
  • Pursuit of incremental research designs comes
    naturally an easily, and dominates research
    (including experimental work)

17
Change in Models and Questions
  • Both analytical logic and incremental pursuits
    change the model used
  • Additional variables use up some degrees of
    freedom, but observations at micro-level are far
    more numerous than at macro-level
  • Shift to micro level also changes the research
    question(s) being asked
  • Why is the price equal x? might be replaced by
    why did trader y bid z?
  • This apparently innocuous change has major
    consequences in experimental economics

18
3. Humans as Imperfect Intuitive Optimizers
  • Well-known that, when acting by intuition alone,
    people are not very good at optimization,
    especially in unfamiliar tasks
  • We can devise laboratory tasks in which, no
    matter how well we explain them, performance will
    be poor at first, much experience, even
    instruction, is necessary before they get better
  • Apparently, cognition necessary for formulating
    and solving unfamiliar problems are no easier for
    lab subjects than for academics who take decades
    or centuries
  • That it takes more than a paragraph or two of
    problem description for intelligent people to
    comprehend and solve a problem is common sense
  • Learning takes time and effort, and is imperfect
  • Indeed, if we were not, a good part of our
    education (and us, the teachers) would be
    unnecessary

19
Cognitive Sciences and As-If Assumption
  • Assumption that agents optimize is the staple of
    economic modeling In building economic theory
  • Questionable descriptive validity of the
    assumption (from cognitive sciences) is
    juxtaposed against its use in modeling
  • If the optimization assumption on part of
    individuals is descriptively invalid, the
    equilibrium models based on the assumption must
    also be invalidso goes the argument
  • As-if assumption is a weak defense for theory
  • Widespread acceptance of this criticism of
    economic theory is a third element in
    preoccupation of experimental economics with
    micro (individual) behavior

20
Dilemma of Social Sciences
  • This increasing emphasis on study of individual
    behavior in experimental economics brings us to
    the middle of the dilemma of social sciences
  • Shall we try to be human and social?
  • Or shall we try to be a science?
  • Can we be both? If so, how and to what extent?

21
Science Eternal Laws
  • Identifying laws of nature valid everywhere and
    all the time
  • Essence regularities of nature captured in known
    and knowable relationships among observable
    elements (including stochastic elements)
  • It helps understand, explain, and predict the
    phenomena of interest (mechanics, sound, light,
    electricity, magnets)
  • If I know X, can I form a better idea of whether
    Y was, is or will be (compared to what is
    possible without knowing X)?
  • Our knowledge of these laws has no effect on
    their validity
  • Objects of science have no free will
  • A photon does not pause to enjoy the scenery
  • A marble rolling down the side of a bowl does not
    wonder about how hot the oil at the bottom is

22
Humanities Eternal Truths
  • Humanities celebrate infinite variety of human
    behavior, but no laws of behavior
  • In epics and literature eternal verities, but no
    laws of behavior
  • Epics (Mahabharata, Iliad)
  • Duryodhana, Yudhishtira, Arjuna
  • Literature (Dantes Inferno, Shakespeares
    Hamlet)
  • Human truths, questions, and tendencies repeated
    through history, but always with a new twist
  • People choose in ways unpredictable on the basis
    of their circumstances
  • Celebration of infinite variation in human nature
  • Each of us is unique, not subject to identifiable
    laws

23
Individual Behavior and the Dilemma of Social
Sciences
  • This shift towards micro-behavior confronts
    economics with a fundamental dilemma shared among
    the social sciences
  • As a science, we seek general laws that apply
    everywhere at all time, emulating physics,
    chemistry and biology
  • Perfecting the scope and power of general laws of
    human behavior also implies squeezing out the
    essence of humanityour free will
  • What does it mean to have a science of individual
    human behavior?

24
Free Will
  • Free will, independent thinking, and ability to
    choose are essential to our concept of self
  • We believe in our power and ability to do what we
    wish, beyond what is predictable on the basis of
    our circumstances, beliefs, and tendencies
  • Ability to rise above our circumstances as the
    essence of human identity
  • We can choose deliberately, in ways unpredictable
    to others
  • Else, we would slip to the status we assign to
    animals, plants and stones

25
Social Science Irresistible Force Meets
Immovable Object
  • Free will essential to our concept of self
  • Without the freedom to act, we would be no
    different than a piece of rock
  • Yet, the object of study in social science is us
  • As a science, it must look for eternal laws that
    apply to all humanity at all times
  • But stripped of freedom to act, and subject to
    such laws, there can be no humanity

26
Mismatch of Science and Personal Responsibility
  • Objects of science can have no personal
    responsibility
  • They do not choose to do anything
  • They are merely driven by their circumstances,
    like a piece of paper blown by gusts of wind, or
    a piece of rock rolling down the hill under force
    of gravity in the path of an oncoming car (will
    you blame the rock for the resulting damage)
  • In social settings, when we link an abused
    childhood to growing up to be an abusive parent,
    we absolve the person for personal responsibility
    for such behavior
  • Science and personal responsibility do not mix
    well

27
Social Science Neither Fish Nor Fowl
  • This problem of social science is exemplified in
    the continuing attempts to build a theory of
    choice
  • From science end axiomatization of human choice
    as a function of innate preferences. People
    choose what they prefer
  • How do we know what they prefer? Look at what
    they choose
  • The circularity between preferences and choice
    might be avoided if there were permanency and
    consistency in preference-choice relationship
    across diverse contexts

28
Choice Theory
  • One could observe choice in one context,
    tentatively infer the preferences from these
    observations, and assuming consistent
    preferences, predict choice in other contexts
  • Unfortunately, half-a-century of research has
    yielded little predictability of choice from
    inferred preferences across contexts (Friedman
    and Sunder 2004)
  • Individual human behavior appears to be
    unmanageably rowdy for scientists to capture in a
    stable set of laws
  • While humanists may not take delight at such
    disappointments, but they can hardly be surprised
    (if they pay any attention at all to our choice
    theory)

29
Back to the Dilemma of Social Sciences
  • Do we abandon free will, personal responsibility,
    and special human identity and treat humans like
    other objects of science?
  • That is, drop the social and become a plain
    vanilla science
  • Or, do we abandon the search for universal laws,
    embrace human free will and unending variation of
    behavior, and join the humanities
  • Either way, there will be no social science left
  • Is there a way to keep social and science
    together in social science?

30
Isolating Three Streams of Work
  • Perhaps there is no general solution to this
    dilemma
  • The dilemma does, however, point to the potential
    value of isolating streams of work where it may
    be more or less of a problem
  • Significant parts of social sciences, and a large
    part of economics, are concerned with aggregate
    level outcomes of socio-economic institutions
  • Institutions are human artifacts, and they do not
    need to be ascribed intentionality or free will
  • Characteristics of the institutions can be
    analyzed by methods of science without running
    into these dilemmas
  • This will leave analysis of individual behavior
    in the territory between science and humanities
  • Agent-based models (in economics and elsewhere)
    could serve the bridging function between
    aggregate and individual phenomena
  • Let us consider these possibilities

31
Individual Behavior
  • I do not have much to add on the most complex
    problem of examining individual behavior
  • It seems that we shall continue to examine
    ourselves and our behavior using both humanities
    as well as science perspectives, without ever
    reconciling the two into a single logical
    structure
  • There seems to be no way out, as far as I can see

32
Institutions
  • Experimental economics started out as
    investigation of aggregate level outcomes of
    market institutions using human subjects
  • Attention has gradually shifted from aggregate
    outcomes to micro behavior
  • Logic of analytical approach
  • Incremental research designs
  • A third reason is that predictions of aggregate
    outcomes (equilibrium analysis) are typically
    made assuming optimization by individuals
  • Cognitive psychology showed that individuals are
    not very good at optimization by intuition
  • This mismatch between the optimization assumption
    actual behavior at individual level has given
    additional impetus to micro-nization of
    experimental economics
  • Thanks to the development of experimental as well
    as agent-based methods, we can conduct the study
    of social-economic institutions using methods of
    science

33
Optimization and Equilibrium
  • The standard approach of economic analysis has
    been to assume that individuals choose actions by
    optimizing given their preferences, information
    and opportunity sets
  • Interaction of individual actions in the context
    of institutional rules yield outcomes (e.g.,
    prices and allocations), of which equilibrium
    outcomes are of special interest
  • Equilibrium predictions derived from assuming
    individual rationality could be suspect when such
    rationality assumption is not valid
  • Agent-based simulations suggest that individual
    rationality may not necessary for attaining
    equilibria in the context of specific market
    institutions

34
Discovering Structural Properties of Market
Institutions
  • Double auctions with three kinds of agents
  • Agent traders randomly pick bids and asks from a
    fixed support (0-200)
  • Human traders motivated by profit
  • Agent-traders randomly pick bids and asks from a
    fixed support (0-200) subject to budget
    constraint
  • Results of the constrain ZI traders close to the
    results obtained from human traders

35
Double Auctions with Intelligent Automatons
  • Still converged to CE
  • Greater variance in prices
  • Many more bids/asks per transaction

36
Double Auctions with Zero-Intelligence
Automatons
  • Random bids and asks
  • No loss constraint internal or external
  • Markets converge to CE
  • Much greater variability in prices
  • How could this be?
  • Some algebra and statistics produce the same
    results

37
What Makes the Difference
38
Other Simulations
  • Double auctions with uncertain reservation values
    and imperfect information (Jamal and Sunder)
  • Multimple interlinked markets (Bosch and Sunder)
  • Non-binding price controls (Gode and Sunder)
  • Edgeworth Box (Gode, Spear and Sunder)

39
Bosch and Sunder (Computational Economics, 2000)
40
(No Transcript)
41
Non-Binding Price Controls
42
Figure 3 Demand and Supply  
 
43
Figure 1 Results from Laboratory Experiments
with Human Subjects (Figure 1. Experiment 226
from Smith and Williams, 1981)  
44
Figure 2 Results from Laboratory Experiments
with Human Subjects Figure 3 from Smith and
Williams (1981)
45
Table 4 Summary Statistics (100 periods for each
column)
46
Figure 4 Histograms of Transaction Price
Distributions
47
Figure 5 Intraperiod Mean of Transaction Price
Series
48
Figure 6 Intraperiod Median and Interquartile
Range of Transaction Price Series
49
Edgeworth Box
  • Simulation

50
Why Equilibrium without Individual Optimization
  • Why do the markets populated with simple
    budget-constrained random bid/ask strategies
    converge close to Walrasian prediction in price
    and allocative efficiency
  • No memory, learning, adaptation, maximization,
    even bounded rationality
  • Search for programming and system errors did not
    yield fruit
  • Modeling and analysis supported simulation results

51
Inference
  • Perhaps it is the structure, not behavior, that
    accounts for the first order magnitude of
    outcomes in competitive settings
  • Computers and experiments with simple agents
    opened a new window into a previously
    inaccessible aspect of economics
  • Ironically, it was not the celebrated
    optimization capability of computers that made it
    possible
  • Instead, it was possible through deconstruction
    of human behavior
  • Isolating the market level consequences of simple
    or arbitrarily chosen classes of individual
    behavior modeled as software agents

52
Optimization Principle
  • In physics marbles and photons behave but are
    not attributed any intention or purpose
  • Yet, optimization principle has proved to be an
    excellent guide to how physical and biological
    systems as a whole behave
  • At multiple hierarchical levels--brain, ganglion,
    and individual cellphysical placement of neural
    components appears consistent with a single,
    simple goal minimize cost of connections among
    the components. The most dramatic instance of
    this "save wire" organizing principle is reported
    for adjacencies among ganglia in the nematode
    nervous system among about 40,000,000
    alternative layout orderings, the actual ganglion
    placement in fact requires the least total
    connection length. In addition, evidence supports
    a component placement optimization hypothesis for
    positioning of individual neurons in the
    nematode, and also for positioning of mammalian
    cortical areas.
  • (Makes you wonder what went wrong with human
    design when you see all the biases and
    incompetence of human cognition.
  • Could it be just the wrong benchmark?)
  • Questions about forests versus questions about
    trees

53
Optimization Principle Imported into Economics
  • Humans and human systems as objects of economic
    analysis
  • Conflict between mechanical application of
    optimization principle and our self-esteem (free
    will)
  • Optimization principle became re-interpreted as a
    behavioral principle, shifting focus from
    aggregate to individual behavior
  • Cognitive science we are not good at optimizing
  • Combination of the two leads to the willingness
    among economists to abandon the optimization
    principle

54
Dropping the Infinite Faculties Assumption
  • Conlisk
  • Empirical evidence in favor of bounded
    rationality
  • Empirical evidence on importance of bounded
    rationality
  • Proven track record of bounded rationality models
    (in explaining individual behavior)
  • Unconvincing logic of unbounded rationality
  • All these reasons focus on the trees not
    forest

55
Seduction by Reductionism
  • Past fifty years have been characterized by a
    powerful reductionist program in economics
  • Robert Lucas and the New Classical school rapidly
    conquered the discipline of macroeconomics by
    integrating doctrine of rigorous
    microfoundations
  • Individual substantive rationality
  • Intertemporal optimization with rational
    expectations
  • Representative agent to map individual to
    aggregate
  • Seeking penetrate deeper into microstructure to
    erect theory of harder and safer ground

56
Unity of Science Movement
  • While the microfoundations program remained
    inside economics, the Unity of Science movement
    (Neurath et al. 1955) was a power force in the
    first half of the twentieth century
  • The grand vision of integrating all science into
    one
  • But all sciences must make assumptions about
    phenomena at the level of details they do not
    wish to delve into
  • Reluctance to make such assumptions leads to the
    infinite regress of Unity of Science movement
    that failed
  • Unification and descriptive validity of all
    assumptions places unreasonable burden on science

57
Equilibrium and Simon
  • Simon understood the dangers of reductionism,
    though many who claim to bear his legacy dont
  • In the third edition of The Sciences of the
    Artificial he wrote
  • This skyhook-skyscraper construction of science
    from the roof down to the yet un-constructed
    foundations was possible because the behavior of
    the system at each level depended on only a very
    approximate, simplified, abstracted
    characterization of the system at the level next
    beneath. This is lucky, else the safety of
    bridges and airplanes might depend on the
    correctness of the Eightfold Way of looking at
    elementary particles.
  • Indeed, the powerful results of economic theory
    were derived from a very approximate,
    simplified, abstracted characterization of the
    system at the level next beneath,the economic
    man so maligned, and its scientific purpose and
    role so misunderstood, by many who claim to be
    followers of Simon

58
Shaking Free of Reduction
  • The recent work suggests an idea opposite to the
    reductionist program
  • The deeper we go into microstructure, we sink
    into the sandy grounds of heterogeneity, bounded
    rationality, and all sorts of behavioral vagaries
  • Serious pursuit of methodological individualism
    and microfoundations is a one-way journey with no
    return ticket to meso- or macro-surface
  • Rigorous microfoundations do not appear to be
    serious scientifically
  • Serious microfoundations discovered through
    scientific investigation of human behavior are
    hardly susceptible to rigorous aggregation
    procedures

59
Whither Micro-foundations?
  • Gode and Sunder (1993) some well-behaved
    properties that emerge at the macro-level of the
    economy need not have any counterpart at the
    micro-level. It is constraints and transactions
    technologies (i.e., institutions) no individual
    rationality, that give rise to well-behaved
    aggregative properties
  • Combine with Sonnenschein-Mantel to conclude that
    individual substantive rationality is neither
    necessary nor sufficient to obtain well-behaved
    macro properties

60
Economics Structural or Behavioral
  • Economics can be usefully thought of as a
    behavioral science in the sense physicists study
    the behavior of marbles and photons
  • Given the pride we take in attributing the
    endowment of free will to ourselves, this
    interpretation of behavior is a hard sell in
    social sciences
  • To build on the achievements of theory, it may be
    better if we think of optimization in economics
    as a structural principle, Just as physicists
    (and many biologists) do

61
Division of Work into Three Streams
  • At least the structural part of economics can be
    firmly rooted in the tradition of sciences,
    bypassing the free-will dilemma of social
    sciences
  • Individual behavior is likely to remain as a
    shared domain of humanities and sciences
  • Modeling specific behaviors as software agents in
    the context of specific economic institutions
    allows us to make conditional statements about
    the links between individual and aggregate level
    phenomena (as in the case of ZI agents and the
    great deal of other work in agent-based
    economics)
  • There is hope for the science in social
    science, in studying the structure
  • Richard Posner Try harder
  • Source of power of science (and economics) KISS

62
A Visit to Farmers Market in Kochi
63
Thank You
  • Please send comments to
  • Shyam.sunder_at_yale.edu
  • www.som.yale.edu/faculty/sunder
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