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Backprop-Free Reinforcement Learning with Active Neural Generative Coding

AAAI Conference on Artificial Intelligence (AAAI), 2021
Abstract

In humans, perceptual awareness facilitates the fast recognition and extraction of information from sensory input. This awareness largely depends on how the human agent interacts with the environment. In this work, we propose active neural generative coding, a computational framework for learning action-driven generative models without backpropagation of errors (backprop) in dynamic environments. Specifically, we develop an intelligent agent that operates even with sparse rewards, drawing inspiration from the cognitive theory of planning as inference. We demonstrate on several control problems, in the online learning setting, that our proposed modeling framework performs competitively with deep Q-learning models. The robust performance of our agent offers promising evidence that a backprop-free approach for neural inference and learning can drive goal-directed behavior.

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