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Learning to Adapt to Unknown Users: Referring Expression Generation in Spoken Dialogue Systems

机译:学习适应未知用户:在口语对话系统中引用表情生成

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We present a data-driven approach to learn user-adaptive referring expression generation (REG) policies for spoken dialogue systems. Referring expressions can be difficult to understand in technical domains where users may not know the technical 'jargon' names of the domain entities. In such cases, dialogue systems must be able to model the user's (lexical) domain knowledge and use appropriate referring expressions. We present a reinforcement learning (RL) framework in which the system learns REG policies which can adapt to unknown users online. Furthermore, unlike supervised learning methods which require a large corpus of expert adaptive behaviour to train on, we show that effective adaptive policies can be learned from a small dialogue corpus of non-adaptive human-machine interaction, by using a RL framework and a statistical user simulation. We show that in comparison to adaptive hand-coded baseline policies, the learned policy performs significantly better, with an 18.6% average increase in adaptation accuracy. The best learned policy also takes less dialogue time (average 1.07 min less) than the best hand-coded policy. This is because the learned policies can adapt online to changing evidence about the user's domain expertise.
机译:我们提出了一种数据驱动的方法来学习口语对话系统的用户自适应指代表达生成(REG)策略。在用户可能不知道域实体的技术“行话”名称的技术领域中,引用表达式可能很难理解。在这种情况下,对话系统必须能够对用户(词汇)领域知识进行建模并使用适当的引用表达。我们提出一种强化学习(RL)框架,在该框架中,系统学习可以适应在线未知用户的REG策略。此外,与需要大量专家适应行为进行训练的监督学习方法不同,我们表明,可以通过使用RL框架和统计数据,从非自适应人机交互的小型对话语料中学习有效的适应策略。用户模拟。我们表明,与自适应手编码基准策略相比,学习策略的性能明显更好,自适应精度平均提高了18.6%。最好的学习策略所花费的对话时间也比最好的手工编码策略所花费的对话时间少(平均少1.07分钟)。这是因为学习到的策略可以在线调整以适应有关用户领域专业知识的不断变化的证据。

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