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Revealing Nonlinear Neural Decoding by Analyzing Choices

Revealing Nonlinear Neural Decoding by Analyzing Choices
Topic
Revealing Nonlinear Neural Decoding by Analyzing Choices
Speaker
Qianli Yang, Changzhou University
Tuesday, June 04, 2019 - 14:00-15:00
Room 385, Geography Building, Zhongbei Campus, East China Normal University

Abstract: 

Sensory data about most natural task-relevant variables are entangled with task-irrelevant nuisance variables. The neurons that encode these relevant signals constitute a nonlinear population code. Here we present a theoretical framework for quantifying how the brain uses or decodes its nonlinear information. Our theory obeys fundamental mathematical limitations on information content inherited from the sensory periphery, identifying redundant codes when there are many more cortical neurons than primary sensory neurons. The theory predicts that if the brain uses its nonlinear population codes optimally, then more informative patterns should be more correlated with choices. In fact, the theory predicts a simple, easily computed quantitative relationship between fluctuating neural activity and behavioral choices that reveals the decoding efficiency. We analyze recordings from primary visual cortex of monkeys performing a variance discrimination task, and find these data are consistent with the hypothesis of near-optimal nonlinear decoding.

 

Sponsored by the NYU-ECNU Institute of Brain and Cognitive Science at NYU Shanghai