Context-Aware Dialog Re-Ranking for Task-Oriented Dialog Systems

Junki Ohmura, M. Eskénazi
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引用次数: 5

Abstract

Dialog response ranking is used to rank response candidates by considering their relation to the dialog history. Although researchers have addressed this concept for open-domain dialogs, little attention has been focused on task-oriented dialogs. Furthermore, no previous studies have analyzed whether response ranking can improve the performance of existing dialog systems in real human–computer dialogs with speech recognition errors. In this paper, we propose a context-aware dialog response re-ranking system. Our system reranks responses in two steps: (1) it calculates matching scores for each candidate response and the current dialog context; (2) it combines the matching scores and a probability distribution of the candidates from an existing dialog system for response re-ranking. By using neural word embedding-based models and handcrafted or logistic regression-based ensemble models, we have improved the performance of a recently proposed end-to-end task-oriented dialog system on real dialogs with speech recognition errors.
面向任务的对话系统的上下文感知对话重新排序
对话响应排序是通过考虑候选响应与对话历史的关系来对候选响应进行排序。尽管研究人员已经在开放域对话中提出了这个概念,但很少有人关注面向任务的对话。此外,在存在语音识别错误的真实人机对话中,没有研究分析响应排序是否能提高现有对话系统的性能。在本文中,我们提出了一个上下文感知的对话响应重新排序系统。我们的系统分两步对回复进行重新排名:(1)计算每个候选回复与当前对话上下文的匹配分数;(2)结合匹配分数和现有对话系统中候选对象的概率分布,对响应进行重新排序。通过使用基于神经词嵌入的模型和基于手工或逻辑回归的集成模型,我们改进了最近提出的端到端面向任务的对话系统在具有语音识别错误的真实对话中的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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