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arxiv: 1911.10601 · v1 · pith:OVARIXQNnew · submitted 2019-11-24 · 💻 cs.LG · cs.AI· cs.IT· cs.SY· eess.SY· math.IT· stat.ML

Scaling active inference

classification 💻 cs.LG cs.AIcs.ITcs.SYeess.SYmath.ITstat.ML
keywords inferenceactivelearningagentsframeworkmodelmodel-basedresults
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In reinforcement learning (RL), agents often operate in partially observed and uncertain environments. Model-based RL suggests that this is best achieved by learning and exploiting a probabilistic model of the world. 'Active inference' is an emerging normative framework in cognitive and computational neuroscience that offers a unifying account of how biological agents achieve this. On this framework, inference, learning and action emerge from a single imperative to maximize the Bayesian evidence for a niched model of the world. However, implementations of this process have thus far been restricted to low-dimensional and idealized situations. Here, we present a working implementation of active inference that applies to high-dimensional tasks, with proof-of-principle results demonstrating efficient exploration and an order of magnitude increase in sample efficiency over strong model-free baselines. Our results demonstrate the feasibility of applying active inference at scale and highlight the operational homologies between active inference and current model-based approaches to RL.

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