Curiosity-driven reinforcement learning with homeostatic regulation

We propose a curiosity reward based on information theory principles and consistent with the animal instinct to maintain certain critical parameters within a bounded range. Our experimental validation shows the added value of the additional homeostatic drive to enhance the overall information gain of a reinforcement learning agent interacting with a complex environment using continuous actions. Our method builds upon two ideas: i) To take advantage of a new Bellman-like equation of information gain and ii) to simplify the computation of the local rewards by avoiding the approximation of complex distributions over continuous states and actions.

READ FULL TEXT

page 5

page 6

research
03/29/2021

Shaping Advice in Deep Multi-Agent Reinforcement Learning

Multi-agent reinforcement learning involves multiple agents interacting ...
research
09/14/2021

Continuous Homeostatic Reinforcement Learning for Self-Regulated Autonomous Agents

Homeostasis is a prevalent process by which living beings maintain their...
research
01/21/2019

A Short Survey on Probabilistic Reinforcement Learning

A reinforcement learning agent tries to maximize its cumulative payoff b...
research
04/10/2020

Self Punishment and Reward Backfill for Deep Q-Learning

Reinforcement learning agents learn by encouraging behaviours which maxi...
research
06/18/2012

Artist Agent: A Reinforcement Learning Approach to Automatic Stroke Generation in Oriental Ink Painting

Oriental ink painting, called Sumi-e, is one of the most appealing paint...
research
06/18/2018

A unified strategy for implementing curiosity and empowerment driven reinforcement learning

Although there are many approaches to implement intrinsically motivated ...

Please sign up or login with your details

Forgot password? Click here to reset