使用迁移学习的有效强化学习

N. Sandeep Varma, K. Pradyumna Rahul, Vaishnavi Sinha
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引用次数: 0

摘要

利用对环境的视觉观察来确定理想的行动是强化学习试图解决的问题。尽管有几种算法使用了卷积神经网络,但它们在快速学习表征方面不是很有效,并且通常需要很长时间才能收敛。迁移学习已经被用作机器学习中最小化训练时间和资源的一种手段,因为它消除了对大型数据集的需求。本文描述了一种通过在异步优势演员评论家(A3C)方法中集成预训练的ResNet50来实现演员评论家方法中的迁移学习的方法。所提出的方法被称为强化学习中的ResNet迁移学习(ResTLRL),它表明迁移学习可以应用于不同的环境,与OpenAI Atari基准上的原始实现相比,在最大奖励方面提高了68%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Reinforcement Learning using Transfer Learning
Using visual observation of environments to identify an ideal action is the problem Reinforcement Learning attempts to solve. Even though several algorithms have used convolutional neural networks, they are not very efficient at learning the representations quickly and generally require large periods of time to converge. Transfer learning has been used as a means to minimize training time and resources in machine learning as it removes the need for a large dataset. This paper describes an approach to implementing transfer learning in actor-critic methods by integrating a pre-trained ResNet50 in the approach to Asynchronous Advantage Actor Critic (A3C). The proposed method is known as ResNet Transfer Learning in Reinforcement Learning (ResTLRL) and it demonstrates that transfer learning can be applied to working with different environments with an improvement of over 68% in terms of maximum rewards when compared to the original implementation on OpenAI Atari benchmarks.
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