深度强化学习对实际人工智能应用的影响

Tipajin Thaipisutikul, Yi-Cheng Chen, Lin Hui, Sheng-Chih Chen, P. Mongkolwat, T. Shih
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引用次数: 2

摘要

强化学习(RL)是一个非凡的范例,旨在解决一个复杂的问题。该技术利用具有时间差学习的传统前馈网络来克服有监督和无监督的现实世界问题。然而,由于RL在设计和实现上的不透明性,RL一直是当前研究的前沿课题之一。此外,在哪种情况下我们将从强化学习中获得性能提升仍不清楚。因此,本研究首先考察了经验回放对自动驾驶汽车应用深度Q-Learning智能体的影响。其次,研究了资格跟踪对RNN A3C代理的影响。我们的研究结果表明,与传统的RL方法相比,这两种技术将RL的性能提高了20%以上。
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The Matter of Deep Reinforcement Learning Towards Practical AI Applications
Reinforcement Learning (RL) is an extraordinarily paradigm that aims to solve a complex problem. This technique leverages the traditional feedforward networks with temporal-difference learning to overcome supervised and unsupervised real-world problems. However, RL is one of state-of-the-art topic due to the opaque aspects in design and implementation. Also, in which situation we will get performance gain from RL is still unclear. Therefore, This study firstly examines the impact of Experience Replay in Deep Q-Learning agent with Self-Driving Car application. Secondly, The impact of Eligibility Trace in RNN A3C agents with Breakout AI game application is studied. Our results indicated that these two techniques enhance RL performance by more than 20 percent as compared with traditional RL methods.
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