LGAIFeb 7, 2024

Learning Diverse Policies with Soft Self-Generated Guidance

arXiv:2402.04539v15 citationsh-index: 7Int J Intell Syst
Originality Incremental advance
AI Analysis

This addresses the problem of inefficient learning in RL for researchers, offering an incremental improvement over existing memory-based methods.

The paper tackles the challenge of reinforcement learning with sparse and deceptive rewards by using diverse past trajectories as guidance, resulting in significantly better performance in diverse exploration and avoiding local optima compared to baseline methods.

Reinforcement learning (RL) with sparse and deceptive rewards is challenging because non-zero rewards are rarely obtained. Hence, the gradient calculated by the agent can be stochastic and without valid information. Recent studies that utilize memory buffers of previous experiences can lead to a more efficient learning process. However, existing methods often require these experiences to be successful and may overly exploit them, which can cause the agent to adopt suboptimal behaviors. This paper develops an approach that uses diverse past trajectories for faster and more efficient online RL, even if these trajectories are suboptimal or not highly rewarded. The proposed algorithm combines a policy improvement step with an additional exploration step using offline demonstration data. The main contribution of this paper is that by regarding diverse past trajectories as guidance, instead of imitating them, our method directs its policy to follow and expand past trajectories while still being able to learn without rewards and approach optimality. Furthermore, a novel diversity measurement is introduced to maintain the team's diversity and regulate exploration. The proposed algorithm is evaluated on discrete and continuous control tasks with sparse and deceptive rewards. Compared with the existing RL methods, the experimental results indicate that our proposed algorithm is significantly better than the baseline methods regarding diverse exploration and avoiding local optima.

Foundations

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