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Abstract
When making a decision, one must first accumulate evidence, often over time, and then
select the appropriate action. Here, we present a neural model of decision making
that can perform both evidence accumulation and action selection optimally. More specifically,
we show that, given a Poisson-like distribution of spike counts, biological neural
networks can accumulate evidence without loss of information through linear integration
of neural activity and can select the most likely action through attractor dynamics.
This holds for arbitrary correlations, any tuning curves, continuous and discrete
variables, and sensory evidence whose reliability varies over time. Our model predicts
that the neurons in the lateral intraparietal cortex involved in evidence accumulation
encode, on every trial, a probability distribution which predicts the animal's performance.
We present experimental evidence consistent with this prediction and discuss other
predictions applicable to more general settings.