基于pomdp的大规模对话系统中的非策略学习

Lucie Daubigney, M. Geist, O. Pietquin
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引用次数: 33

摘要

强化学习(RL)现在是口语对话系统(SDS)优化领域的最新技术的一部分。大多数高性能的强化学习方法,比如那些基于高斯过程的方法,需要测试策略中的微小变化,以评估它们是改进还是退化。这个过程被称为政策学习。然而,它可能导致用户无法接受的系统行为。理想情况下,学习算法应该通过观察由非最优但可接受的策略产生的交互来推断出最优策略,即学习非策略。这种方法通常不能扩展,因此不适合现实世界的系统。在这篇贡献中,提出了一种样本效率,在线和非策略强化学习算法来学习最优策略。该算法结合了一个紧凑的非线性值函数表示(即多层感知器),能够处理大规模系统。
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Off-policy learning in large-scale POMDP-based dialogue systems
Reinforcement learning (RL) is now part of the state of the art in the domain of spoken dialogue systems (SDS) optimisation. Most performant RL methods, such as those based on Gaussian Processes, require to test small changes in the policy to assess them as improvements or degradations. This process is called on policy learning. Nevertheless, it can result in system behaviours that are not acceptable by users. Learning algorithms should ideally infer an optimal strategy by observing interactions generated by a non-optimal but acceptable strategy, that is learning off-policy. Such methods usually fail to scale up and are thus not suited for real-world systems. In this contribution, a sample-efficient, online and off-policy RL algorithm is proposed to learn an optimal policy. This algorithm is combined to a compact non-linear value function representation (namely a multi-layers perceptron) enabling to handle large scale systems.
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