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Seminar✓ Recording AvailableNeuroscience

Canonical neural networks perform active inference

Takuya Isomura

Dr

RIKEN CBS

Schedule
Friday, June 10, 2022

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Schedule

Saturday, June 11, 2022

6:00 AM Asia/Tokyo

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Host: Consciousness Club Tokyo

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Event Information

Domain

Neuroscience

Original Event

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Host

Consciousness Club Tokyo

Duration

70 minutes

Abstract

The free-energy principle and active inference have received a significant attention in the fields of neuroscience and machine learning. However, it remains to be established whether active inference is an apt explanation for any given neural network that actively exchanges with its environment. To address this issue, we show that a class of canonical neural networks of rate coding models implicitly performs variational Bayesian inference under a well-known form of partially observed Markov decision process model (Isomura, Shimazaki, Friston, Commun Biol, 2022). Based on the proposed theory, we demonstrate that canonical neural networks—featuring delayed modulation of Hebbian plasticity—can perform planning and adaptive behavioural control in the Bayes optimal manner, through postdiction of their previous decisions. This scheme enables us to estimate implicit priors under which the agent’s neural network operates and identify a specific form of the generative model. The proposed equivalence is crucial for rendering brain activity explainable to better understand basic neuropsychology and psychiatric disorders. Moreover, this notion can dramatically reduce the complexity of designing self-learning neuromorphic hardware to perform various types of tasks.

Topics

active inferenceadaptive behavioural controlcanonical neural networksfree energy principlefree-energy principlegenerative modelhebbian plasticitymarkov decision processplanningvariational Bayesian inference

About the Speaker

Takuya Isomura

Dr

RIKEN CBS

Contact & Resources

Personal Website

sites.google.com/site/takuyaisomura/

@TakuyaIsomura

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twitter.com/TakuyaIsomura

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