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A brief survey of deep reinforcement learning

机译:浅谈深层强化学习

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摘要

Deep reinforcement learning (DRL) is poised to revolutionize the field of artificial intelligence (AI) and represents a step toward building autonomous systems with a higherlevel understanding of the visual world. Currently, deep learning is enabling reinforcement learning (RL) to scale to problems that were previously intractable, such as learning to play video games directly from pixels. DRL algorithms are also applied to robotics, allowing control policies for robots to be learned directly from camera inputs in the real world. In this survey, we begin with an introduction to the general field of RL, then progress to the main streams of value-based and policy-based methods. Our survey will cover central algorithms in deep RL, including the deep Q-network (DQN), trust region policy optimization (TRPO), and asynchronous advantage actor critic. In parallel, we highlight the unique advantages of deep neural networks, focusing on visual understanding via RL. To conclude, we describe several current areas of research within the field.
机译:深度强化学习(DRL)有望彻底改变人工智能(AI)领域,并朝着建立对视觉世界有更高理解的自主系统迈出了一步。当前,深度学习使强化学习(RL)可以扩展到以前难以解决的问题,例如直接从像素学习玩视频游戏。 DRL算法也被应用于机器人技术,从而可以直接从现实世界中的摄像机输入中学习机器人的控制策略。在本次调查中,我们首先介绍RL的一般领域,然后发展到基于价值和基于策略的方法的主流。我们的调查将涵盖深度RL中的中心算法,包括深度Q网络(DQN),信任区域策略优化(TRPO)和异步优势参与者评论家。同时,我们重点介绍了通过RL进行视觉理解的深度神经网络的独特优势。总而言之,我们描述了该领域当前的几个研究领域。

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