LGSYMar 18, 2024

Multistep Inverse Is Not All You Need

arXiv:2403.11940v27 citationsh-index: 5Has CodeRLJ
Originality Incremental advance
AI Analysis

This work addresses a domain-specific challenge in reinforcement learning for control tasks with noisy observations, offering an incremental improvement over prior methods.

The paper tackles the problem of learning control-relevant latent representations from high-dimensional, noisy observations in Ex-BMDP models, showing that the existing AC-State method fails in some cases, and proposes ACDF, which combines multistep-inverse prediction with a latent forward model to guarantee correct inference and demonstrates effectiveness in tabular and high-dimensional environments.

In real-world control settings, the observation space is often unnecessarily high-dimensional and subject to time-correlated noise. However, the controllable dynamics of the system are often far simpler than the dynamics of the raw observations. It is therefore desirable to learn an encoder to map the observation space to a simpler space of control-relevant variables. In this work, we consider the Ex-BMDP model, first proposed by Efroni et al. (2022), which formalizes control problems where observations can be factorized into an action-dependent latent state which evolves deterministically, and action-independent time-correlated noise. Lamb et al. (2022) proposes the "AC-State" method for learning an encoder to extract a complete action-dependent latent state representation from the observations in such problems. AC-State is a multistep-inverse method, in that it uses the encoding of the the first and last state in a path to predict the first action in the path. However, we identify cases where AC-State will fail to learn a correct latent representation of the agent-controllable factor of the state. We therefore propose a new algorithm, ACDF, which combines multistep-inverse prediction with a latent forward model. ACDF is guaranteed to correctly infer an action-dependent latent state encoder for a large class of Ex-BMDP models. We demonstrate the effectiveness of ACDF on tabular Ex-BMDPs through numerical simulations; as well as high-dimensional environments using neural-network-based encoders. Code is available at https://github.com/midi-lab/acdf.

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