Entropy (May 2024)

On Predictive Planning and Counterfactual Learning in Active Inference

  • Aswin Paul,
  • Takuya Isomura,
  • Adeel Razi

DOI
https://doi.org/10.3390/e26060484
Journal volume & issue
Vol. 26, no. 6
p. 484

Abstract

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Given the rapid advancement of artificial intelligence, understanding the foundations of intelligent behaviour is increasingly important. Active inference, regarded as a general theory of behaviour, offers a principled approach to probing the basis of sophistication in planning and decision-making. This paper examines two decision-making schemes in active inference based on “planning” and “learning from experience”. Furthermore, we also introduce a mixed model that navigates the data complexity trade-off between these strategies, leveraging the strengths of both to facilitate balanced decision-making. We evaluate our proposed model in a challenging grid-world scenario that requires adaptability from the agent. Additionally, our model provides the opportunity to analyse the evolution of various parameters, offering valuable insights and contributing to an explainable framework for intelligent decision-making.

Keywords