A View from the Bottom Peter Dayan Gatsby Computational Neuroscience Unit.

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A View from the Bottom Peter Dayan Gatsby Computational Neuroscience Unit

Transcript of A View from the Bottom Peter Dayan Gatsby Computational Neuroscience Unit.

Page 1: A View from the Bottom Peter Dayan Gatsby Computational Neuroscience Unit.

A View from the Bottom

Peter DayanGatsby Computational Neuroscience Unit

Page 2: A View from the Bottom Peter Dayan Gatsby Computational Neuroscience Unit.

Neural Decision Making

• bewilderingly vast topic • models playing a central role

– so beware of self-confirmation + battles

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• Ethology/Economics(?)– optimality– logic of the approach

• Psychology– economic choices – instrumental/Pavlovian conditioning

• Computation

• Algorithm

• Implementation/Neurobiologyneuromodulators; amygdala; prefrontal cortex

nucleus accumbens; dorsal striatum

prediction: of important eventscontrol: in the light of those predictions

Neural Decision Making

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Imprecision & Noise

• computation– Bayesian sensory inference– Kalman filtering and optimal learning– metacognition

– exploration/exploitation

– game theory

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Imprecision & Noise

• algorithm– multiple methods of choice

• instrumental: model-based; model-free– (note influence on RTs)

• Pavlovian: evolutionary programming

– uncertainty-modulated inference and learning

– DFT/drift diffusion decision-making

– MCMC methods for inference

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Imprecision & Noise

• implementation– (where does the noise come from?)

– evidence accumulation– Q-learning and dopamine– metacognition and the PFC– acetylcholine/norepinephrine and uncertainty-

sensitive inference and learning

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Diffusion to Bound

Britten et al, 1992

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Diffusion to Bound• expected reward, priors affect

starting point• some evidence for urgency

signal• works for discrete evidence

(WPT)• less data on >2 options• micro-stimulation works as

expected• decision via striatum/superior

colliculus/etc?• choice probability for single

neuronsGold & Shadlen, 2007

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dopamine and prediction error

no prediction prediction, reward prediction, no reward

TD error

Vt

R

RL

tttt VVr 1

)(t

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Probability and Magnitude

Tobler et al, 2005

Fior

illo

et a

l, 20

03

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Risk Processing

< 1 sec

0.5 sec

You won40 cents

5 secISI

19 subjects (dropped 3 non learners, N=16)3T scanner, TR=2sec, interleaved234 trials: 130 choice, 104 single stimulusrandomly ordered and counterbalanced

2-5secITI

5 stimuli:

40¢20¢

0/40¢0¢0¢

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Neural results: Prediction errors

what would a prediction error look like (in BOLD)?

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Neural results I: Prediction errors in NAC

unbiased anatomical ROI in nucleus accumbens (marked per

subject*)

* thanks to Laura deSouza

raw BOLD(avg over all

subjects)

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Value Independent of Choice CauuvrECQ tttt ,1|)(),1( 1

**

),1(),2(max),1(),1( CQaQrCQCQ at

Roesch et al, 2007

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Metacognition

• Fleming et al, 2010

• contrast staircase for performance; type II ROC for confidence

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Structural Correlate

• also associated white matter (connections)

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Discussion

• what can economics do for us?– theoretical, experimental ideas– experimental methods– like behaviorism…

• what can we do for economics?– large range of constraints– objects of experimental inquiry precisely aligned

with economic notions– grounding/excuse for complexity…