LGCTApr 3, 2024

Reinforcement Learning in Categorical Cybernetics

arXiv:2404.02688v25 citationsh-index: 2ACT
Originality Incremental advance
AI Analysis

This provides a theoretical unification of RL algorithms, which could influence future research in machine learning theory, though it is incremental as it builds on prior work in categorical cybernetics.

The paper demonstrates that major reinforcement learning algorithms can be framed within categorical cybernetics using parametrised optics, showing that dynamic programming, Monte Carlo methods, temporal difference learning, and deep RL are extremal cases of this unified approach.

We show that several major algorithms of reinforcement learning (RL) fit into the framework of categorical cybernetics, that is to say, parametrised bidirectional processes. We build on our previous work in which we show that value iteration can be represented by precomposition with a certain optic. The outline of the main construction in this paper is: (1) We extend the Bellman operators to parametrised optics that apply to action-value functions and depend on a sample. (2) We apply a representable contravariant functor, obtaining a parametrised function that applies the Bellman iteration. (3) This parametrised function becomes the backward pass of another parametrised optic that represents the model, which interacts with an environment via an agent. Thus, parametrised optics appear in two different ways in our construction, with one becoming part of the other. As we show, many of the major classes of algorithms in RL can be seen as different extremal cases of this general setup: dynamic programming, Monte Carlo methods, temporal difference learning, and deep RL. We see this as strong evidence that this approach is a natural one and believe that it will be a fruitful way to think about RL in the future.

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