Free Energy Projective Simulation (FEPS): Active inference with interpretability
Jos\'ephine Pazem, Marius Krumm, Alexander Q. Vining, Lukas J., Fiderer, Hans J. Briegel

TL;DR
This paper introduces FEPS, an interpretable active inference model that builds environmental representations without deep neural networks, effectively solving tasks by minimizing free energy and handling long-term goals.
Contribution
FEPS provides a novel, interpretable approach to active inference, avoiding deep neural networks while effectively modeling agents in partially observable environments.
Findings
FEPS agents resolve environment ambiguity through prediction accuracy.
FEPS infers optimal policies for various target observations.
The model demonstrates flexibility in handling long-term goals.
Abstract
In the last decade, the free energy principle (FEP) and active inference (AIF) have achieved many successes connecting conceptual models of learning and cognition to mathematical models of perception and action. This effort is driven by a multidisciplinary interest in understanding aspects of self-organizing complex adaptive systems, including elements of agency. Various reinforcement learning (RL) models performing active inference have been proposed and trained on standard RL tasks using deep neural networks. Recent work has focused on improving such agents' performance in complex environments by incorporating the latest machine learning techniques. In this paper, we take an alternative approach. Within the constraints imposed by the FEP and AIF, we attempt to model agents in an interpretable way without deep neural networks by introducing Free Energy Projective Simulation (FEPS).…
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Taxonomy
TopicsMachine Learning in Materials Science · Scientific Computing and Data Management
