离线强化学习在对话响应生成中的有效性研究

Paloma Sodhi, Felix Wu, Ethan R. Elenberg, Kilian Q. Weinberger, Ryan T. McDonald
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引用次数: 1

摘要

一种常见的语言模型训练技术是教师强迫(TF)。TF试图完全匹配人类语言,即使相同的意思可以用不同的方式表达。这促使使用序列级目标生成对话响应。在本文中,我们研究了各种离线强化学习(RL)方法的有效性,以最大化这些目标。我们提出了跨多个数据集、模型和指标的综合评估。离线强化学习在不导致培训不稳定或牺牲实际培训预算的情况下,比教师强迫表现出明显的绩效改善。
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On the Effectiveness of Offline RL for Dialogue Response Generation
A common training technique for language models is teacher forcing (TF). TF attempts to match human language exactly, even though identical meanings can be expressed in different ways. This motivates use of sequence-level objectives for dialogue response generation. In this paper, we study the efficacy of various offline reinforcement learning (RL) methods to maximize such objectives. We present a comprehensive evaluation across multiple datasets, models, and metrics. Offline RL shows a clear performance improvement over teacher forcing while not inducing training instability or sacrificing practical training budgets.
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