English

Reinforcement Learning through Active Inference

Machine Learning 2020-03-02 v1 Artificial Intelligence Information Theory Systems and Control Systems and Control math.IT Machine Learning

Abstract

The central tenet of reinforcement learning (RL) is that agents seek to maximize the sum of cumulative rewards. In contrast, active inference, an emerging framework within cognitive and computational neuroscience, proposes that agents act to maximize the evidence for a biased generative model. Here, we illustrate how ideas from active inference can augment traditional RL approaches by (i) furnishing an inherent balance of exploration and exploitation, and (ii) providing a more flexible conceptualization of reward. Inspired by active inference, we develop and implement a novel objective for decision making, which we term the free energy of the expected future. We demonstrate that the resulting algorithm successfully balances exploration and exploitation, simultaneously achieving robust performance on several challenging RL benchmarks with sparse, well-shaped, and no rewards.

Keywords

Cite

@article{arxiv.2002.12636,
  title  = {Reinforcement Learning through Active Inference},
  author = {Alexander Tschantz and Beren Millidge and Anil K. Seth and Christopher L. Buckley},
  journal= {arXiv preprint arXiv:2002.12636},
  year   = {2020}
}