Ensembles of Neural Networks for Robust Reinforcement Learning

A. Hans, S. Udluft
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引用次数: 36

Abstract

Reinforcement learning algorithms that employ neural networks as function approximators have proven to be powerful tools for solving optimal control problems. However, their training and the validation of final policies can be cumbersome as neural networks can suffer from problems like local minima or over fitting. When using iterative methods, such as neural fitted Q-iteration, the problem becomes even more pronounced since the network has to be trained multiple times and the training process in one iteration builds on the network trained in the previous iteration. Therefore errors can accumulate. In this paper we propose to use ensembles of networks to make the learning process more robust and produce near-optimal policies more reliably. We name various ways of combining single networks to an ensemble that results in a final ensemble policy and show the potential of the approach using a benchmark application. Our experiments indicate that majority voting is superior to Q-averaging and using heterogeneous ensembles (different network topologies) is advisable.
用于鲁棒强化学习的神经网络集成
采用神经网络作为函数逼近器的强化学习算法已被证明是解决最优控制问题的有力工具。然而,它们的训练和最终策略的验证可能会很麻烦,因为神经网络可能会遇到局部最小值或过拟合等问题。当使用迭代方法时,如神经拟合q迭代,问题变得更加明显,因为网络必须进行多次训练,并且一次迭代中的训练过程建立在前一次迭代中训练的网络之上。因此错误会累积。在本文中,我们提出使用网络集成使学习过程更加鲁棒,并更可靠地产生近最优策略。我们列出了将单个网络组合成最终集成策略的集成的各种方法,并使用基准应用程序展示了该方法的潜力。我们的实验表明,多数投票优于q平均,使用异构集成(不同的网络拓扑)是可取的。
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