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Neural Computation Underlying Individual and Social Decision-Making Ming Hsu Haas School of Business University of California, Berkeley Ming Hsu Haas School of Business University of California, Berkeley
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Neesweek, 09.August 2004Forbes, 01.September 2002
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The Big Picture Human Behavior Economics: formal, axiomatic, global Psychology: intuitive, empirical, local Neuroscience: biological, computational evolutionary
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The Big Picture Human Behavior Economics: formal, axiomatic, global. Psychology: intuitive, empirical, local. Neuroscience: biological, circuitry, evolutionary. Neuroeconomics “A mechanistic, behavioral, and mathematical explanation of choice that transcends [each field separately].” - Glimcher and Rustichini. Science (2004)
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The Big Picture Human Behavior Economics: formal, axiomatic, global. Psychology: intuitive, empirical, local. Neuroscience: biological, circuitry, evolutionary. Neuroeconomics Studies how the brain encodes and computes values that guide behavior. Allows us to improve models, design markets/AI, create new diagnostic tools
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Tools That We Used Special Populations Functional Magnetic Resonance Imaging (fMRI)
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fMRI Scanner 7
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fMRI: Changes in Magnetization Basal State Activated State
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Agenda Individual Decision-Making –Ambiguity aversion –fMRI and brain lesion Sociopaths –Social preferences –Special population Take-aways
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Simple Decisions: Blackjack
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Stock? Bond? Domestic? Foreign? Stock? Bond? Domestic? Foreign? Diversify Think long-term Diversify Think long-term More Complicated: Investing
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Whether ? Who? When? Where? Whether ? Who? When? Where? 37% Rule (Mosteller, 1987) “Dozen” Rule (Todd, 1997) 37% Rule (Mosteller, 1987) “Dozen” Rule (Todd, 1997) Complicated: Love/Marriage
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Little knowledge of probabilities Little knowledge of probabilities Simple Complex Most of life’s decisions Precise knowledge of probabilities Precise knowledge of probabilities
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Uncertainty about uncertainty?
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Ellsberg Paradox 1961
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Urn I: Risk Most people indifferent between betting on red versus blue 5 Red 5 Blue
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? Urn II: Ambiguity Most people indifferent between betting on red versus blue ? ??? ? ??? ? 10 - x Red x Blue
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Choose Between Urns Many people prefer betting on Urn I over Urn II. ? ? ??? ? ??? ? Urn II (Ambiguous) Urn I (Risk)
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Where Is The Paradox? P(Red II )=P(Blue II ) P(Red II ) < 0.5 P(Blue II ) < 0.5 ? ? ??? ? ??? ? P(Red I ) = P(Blue I ) P(Red I ) = 0.5 P(Blue I ) = 0.5 P(Red I ) + P(Blue I ) = 1 P(Red II ) + P(Blue II ) = 1 Urn II (Ambiguous) Urn I (Risk)
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Simple Complex Verizon or Deutsche Telekom Jennifer or Angelina Not ambiguity averse Not ambiguity averse
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Verizon or Deutsche Telecom? French & Poterba, American Economic Review (1991).
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fMRI Experiment Hsu, Bhatt, Adolphs, Tranel, and Camerer. Science. (2005)
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fMRI Experiment Hsu, Bhatt, Adolphs, Tranel, and Camerer. Science. (2005)
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Expected Reward Region y - Brain response A(.) - Ambiguity trials R(.) - Risk trials E(.)- Expected value of choices W(.)- Nuisance parameters
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Lower Activity under Ambiguity % Signal Change
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Region Reacting to Uncertainty N.B. This region does not correlate with expected reward. Orbitofrontal Cortex y - Brain response A(.) - Ambiguity trials R(.) - Risk trials E(.)- Expected value of choices W(.)- Nuisance parameters
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Brain Imaging Data Behavioral Choice Data Stochastic Choice Model Link Between Brain and Behavior
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Early Late ? ? A Signal for Uncertainty?
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Lesion Subjects Orbitofrontal Control
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Lesion Experiment 100 Cards 50 Red 50 Black 100 Cards x Red 100-x Black Choose between gamble worth 100 points OR Sure payoffs of 15, 25, 30, 40 and 60 points.
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Estimated Risk and Ambiguity Attitudes Orbitofrontal Lesion Control Lesion Orbitofrontal lesion patients more rational!
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Linking Neural, Behavioral, and Lesion Data Brain Imaging Data Behavioral Choice Data Stochastic Choice Model Imputed value OFC lesion estimate = 0.82
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Agenda Individual Decision-Making –Ambiguity aversion –fMRI and brain lesion Sociopaths –Social preferences –Special population How neuroscience can help economics How economics can help neuroscience
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Norman Bates Psycho, 1960
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Criminality Estimated psychopathy rates among prisoners (various times after 1990) –North American: 20.5% (2003 PCL-R manual) –Canada: 15 – 25% (federal prison) –Iran: 23% –UK: 26% Younger beginnings (14 y.o. vs. 28 y.o. ) “Instrumental” homicides
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Measuring Psychopathy Psychopathy Checklist-Revised, Screening version (PCL-R SV) –24 point scale: 12 traits scored 0, 1, 2 Two factors –Interpersonal-affective factor (6 traits) –Impulsivity-social deviance (6 traits) Impulsivity-social deviance (Factor 2) is less important for us –Except for safety concerns, of course!
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Interpersonal-affective factor Callous and unemotional Superficial charm Grandiosity Lack of empathy and shallow affect Deception and manipulativeness Lack of remorse Not accepting responsibility
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Characterizing Psychopathy using Economic Games What we’re doing –Characterize behavior in these individuals –Provide a quantitative measure of (social) behavior Where we want to go –Use this measure to search for neural and genetic correlates of psychopathy –And other psychiatric and neurological diseases
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Responder Game Your payoff Other’s payoff Your payoff Other’s payoff
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B: Costless punishment Generous Selfish
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B: Costly Reward Generous Selfish
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Responder Game: Intentions Matter
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Power matters? SPs (only): Refuse to let Player B choose
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Power matters Responder Game: Intentions Matter Power matters I would not give control over to another person, even for more money.
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Power matters? Responder Game: Intentions Matter Power matters? I would not give control over to another person, even for more money. Seems like A1 is the more “dominant.”
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Take-aways Neuroeconomics is possible –Studying neural mechanisms of economic decision-making –Nascent field, only about 10 years old –Much progress during that time Many open questions, opportunities –Moral decision-making –Strategic thinking –Financial bubbles –http://neuroecon.berkeley.eduhttp://neuroecon.berkeley.edu
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Eric Set Edelyn Verona Colin Camerer Ralph Adolphs Daniel Tranel Steve Quartz Peter Bossaerts Meghana Bhatt Cédric Anen Shreesh Mysore Acknowledgements
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