Deep Active Inference Agents for Delayed and Long-Horizon Environments
Yavar Taheri Yeganeh, Mohsen Jafari, Andrea Matta

TL;DR
This paper introduces a novel deep active inference agent with a multi-step generative model and integrated policy, capable of effective decision-making in delayed, long-horizon environments without extensive planning.
Contribution
It proposes a generative-policy architecture with multi-step latent transitions and an alternating optimization scheme for long-horizon control in active inference agents.
Findings
Effective decision-making in delayed, long-horizon environments
Eliminates exhaustive planning through single-gradient updates
Demonstrates success in a realistic industrial scenario
Abstract
With the recent success of world-model agents, which extend the core idea of model-based reinforcement learning by learning a differentiable model for sample-efficient control across diverse tasks, active inference (AIF) offers a complementary, neuroscience-grounded paradigm that unifies perception, learning, and action within a single probabilistic framework powered by a generative model. Despite this promise, practical AIF agents still rely on accurate immediate predictions and exhaustive planning, a limitation that is exacerbated in delayed environments requiring plans over long horizons, tens to hundreds of steps. Moreover, most existing agents are evaluated on robotic or vision benchmarks which, while natural for biological agents, fall short of real-world industrial complexity. We address these limitations with a generative-policy architecture featuring (i) a multi-step latent…
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Taxonomy
TopicsScientific Computing and Data Management
