MLLGNEFeb 17, 2021

Chance-Constrained Active Inference

arXiv:2102.08792v27 citations
AI Analysis

This work addresses the need for more flexible constraint handling in Active Inference and graphical models, though it appears incremental as it builds on existing theories with a novel twist.

The paper tackles the problem of incorporating chance constraints into Active Inference to enable goal-directed behavior with a small probability of constraint violation, resulting in a framework that allows trade-offs between robust control and empirical violations and provides a general-purpose message passing approach for graphical models.

Active Inference (ActInf) is an emerging theory that explains perception and action in biological agents, in terms of minimizing a free energy bound on Bayesian surprise. Goal-directed behavior is elicited by introducing prior beliefs on the underlying generative model. In contrast to prior beliefs, which constrain all realizations of a random variable, we propose an alternative approach through chance constraints, which allow for a (typically small) probability of constraint violation, and demonstrate how such constraints can be used as intrinsic drivers for goal-directed behavior in ActInf. We illustrate how chance-constrained ActInf weights all imposed (prior) constraints on the generative model, allowing e.g., for a trade-off between robust control and empirical chance constraint violation. Secondly, we interpret the proposed solution within a message passing framework. Interestingly, the message passing interpretation is not only relevant to the context of ActInf, but also provides a general purpose approach that can account for chance constraints on graphical models. The chance constraint message updates can then be readily combined with other pre-derived message update rules, without the need for custom derivations. The proposed chance-constrained message passing framework thus accelerates the search for workable models in general, and can be used to complement message-passing formulations on generative neural models.

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