动态运动和多层环境下的强化学习系统

Uthai Phommasak, D. Kitakoshi, H. Shioya, Junji Maeda
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引用次数: 0

摘要

通过贝叶斯网络混合模型、混合概率和聚类分布等多种统计方法,强化学习智能体的策略改进系统能够有效地快速适应环境变化。然而,这种方法增加了计算复杂度。另一种方法要求对更复杂的环境(如多层环境)的自适应性能。在本研究中,我们采用利润分享的方法让agent学习策略,并在RL系统中加入混合概率来识别环境的变化,并适当改进agent的策略以适应不断变化的环境。我们还引入了一个集群,它支持更小、更合适的选择,以降低计算复杂性,同时保持系统的性能。实验结果表明,该智能体成功地学习了策略,并能有效地适应多层环境的变化。最后,利用本文提出的系统控制了策略改进的计算复杂度和有效性下降。
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A Reinforcement Learning System to Dynamic Movement and Multi-Layer Environments
There are many proposed policy-improving systems of Reinforcement Learning (RL) agents which are effective in quickly adapting to environmental change by using many statistical methods, such as mixture model of Bayesian Networks, Mixture Probability and Clustering Distribution, etc. However such methods give rise to the increase of the computational complexity. For another method, the adaptation performance to more complex environments such as multi-layer environments is required. In this study, we used profit-sharing method for the agent to learn its policy, and added a mixture probability into the RL system to recognize changes in the environment and appropriately improve the agent’s policy to adjust to the changing environment. We also introduced a clustering that enables a smaller, suitable selection in order to reduce the computational complexity and simultaneously maintain the system’s performance. The results of experiments presented that the agent successfully learned the policy and efficiently adjusted to the changing in multi-layer environment. Finally, the computational complexity and the decline in effectiveness of the policy improvement were controlled by using our proposed system.
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