LGAIDec 30, 2021

Learning Agent State Online with Recurrent Generate-and-Test

arXiv:2112.15236v12 citations
Originality Incremental advance
AI Analysis

This addresses the problem of computationally expensive and hyperparameter-sensitive recurrent neural networks for online learning in reinforcement learning, though it appears incremental as it adapts an existing generate-and-test approach to this context.

The paper tackled the challenge of online learning of agent state from partial observations in reinforcement learning by introducing generate-and-test methods, showing they effectively learn state and produce accurate predictions on multi-step prediction problems.

Learning continually and online from a continuous stream of data is challenging, especially for a reinforcement learning agent with sequential data. When the environment only provides observations giving partial information about the state of the environment, the agent must learn the agent state based on the data stream of experience. We refer to the state learned directly from the data stream of experience as the agent state. Recurrent neural networks can learn the agent state, but the training methods are computationally expensive and sensitive to the hyper-parameters, making them unideal for online learning. This work introduces methods based on the generate-and-test approach to learn the agent state. A generate-and-test algorithm searches for state features by generating features and testing their usefulness. In this process, features useful for the agent's performance on the task are preserved, and the least useful features get replaced with newly generated features. We study the effectiveness of our methods on two online multi-step prediction problems. The first problem, trace conditioning, focuses on the agent's ability to remember a cue for a prediction multiple steps into the future. In the second problem, trace patterning, the agent needs to learn patterns in the observation signals and remember them for future predictions. We show that our proposed methods can effectively learn the agent state online and produce accurate predictions.

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