Improving the Performance of Batch-Constrained Reinforcement Learning in Continuous Action Domains via Generative Adversarial Networks

Baturay Sağlam, Onat Dalmaz, Kaan Gonc, S. Kozat
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Abstract

The Batch-Constrained Q-learning algorithm is shown to overcome the extrapolation error and enable deep reinforcement learning agents to learn from a previously collected fixed batch of transitions. However, due to conditional Variational Autoencoders (VAE) used in the data generation module, the BCQ algorithm optimizes a lower variational bound and hence, it is not generalizable to environments with large state and action spaces. In this paper, we show that the performance of the BCQ algorithm can be further improved with the employment of one of the recent advances in deep learning, Generative Adversarial Networks. Our extensive set of experiments shows that the introduced approach significantly improves BCQ in all of the control tasks tested. Moreover, the introduced approach demonstrates robust generalizability to environments with large state and action spaces in the OpenAI Gym control suite.
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基于生成对抗网络的连续动作域批约束强化学习性能改进
batch - constrained Q-learning算法克服了外推误差,使深度强化学习代理能够从先前收集的固定批次过渡中学习。然而,由于在数据生成模块中使用了条件变分自编码器(conditional Variational Autoencoders, VAE), BCQ算法优化的是一个较低的变分界,因此不能推广到具有大状态和动作空间的环境中。在本文中,我们证明了BCQ算法的性能可以通过使用深度学习的最新进展之一——生成对抗网络来进一步提高。我们大量的实验表明,所引入的方法在所有测试的控制任务中显著提高了BCQ。此外,所引入的方法展示了OpenAI Gym控制套件中具有大型状态和动作空间的环境的健壮通用性。
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