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Parallel Reinforcement Learning: A Framework and Case Study
Authors:Teng Liu  Bin Tian  Yunfeng Ai  Li Li  Dongpu Cao  Fei-Yue Wang
Abstract:In this paper, a new machine learning framework is developed for complex system control, called parallel reinforcement learning. To overcome data deficiency of current data-driven algorithms, a parallel system is built to improve complex learning system by self-guidance. Based on the Markov chain (MC) theory, we combine the transfer learning, predictive learning, deep learning and reinforcement learning to tackle the data and action processes and to express the knowledge. Parallel reinforcement learning framework is formulated and several case studies for real-world problems are finally introduced. 
Keywords:Deep learning  machine learning  parallel reinforcement learning  parallel system  predictive learning  transfer learning
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