Learning Lexical Alignment Policies for Generating Referring Expressions for Spoken Dialogue Systems

S. Janarthanam, Oliver Lemon
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引用次数: 33

Abstract

We address the problem that different users have different lexical knowledge about problem domains, so that automated dialogue systems need to adapt their generation choices online to the users' domain knowledge as it encounters them. We approach this problem using policy learning in Markov Decision Processes (MDP). In contrast to related work we propose a new statistical user model which incorporates the lexical knowledge of different users. We evaluate this user model by showing that it allows us to learn dialogue policies that automatically adapt their choice of referring expressions online to different users, and that these policies are significantly better than adaptive hand-coded policies for this problem. The learned policies are consistently between 2 and 8 turns shorter than a range of different hand-coded but adaptive baseline lexical alignment policies.
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为口语对话系统生成参考表达式学习词汇对齐策略
我们解决了不同用户对问题域有不同的词汇知识的问题,因此自动对话系统需要在遇到用户的领域知识时在线调整它们的生成选择。我们使用马尔可夫决策过程(MDP)中的策略学习来解决这个问题。在此基础上,我们提出了一种新的统计用户模型,该模型结合了不同用户的词汇知识。我们通过展示它允许我们学习对话策略来评估这个用户模型,这些对话策略可以自动调整它们对不同用户在线引用表达式的选择,并且对于这个问题,这些策略明显优于自适应的手工编码策略。学习到的策略始终比一系列不同的手工编码但自适应的基线词法对齐策略短2到8个回合。
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