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A Survey on Learning-Based Approaches for Modeling and Classification of Human–Machine Dialog Systems

机译:基于学习的人机对话系统建模和分类方法调查

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摘要

With the rapid development from traditional machine learning (ML) to deep learning (DL) and reinforcement learning (RL), dialog system equipped with learning mechanism has become the most effective solution to address human-machine interaction problems. The purpose of this article is to provide a comprehensive survey on learning-based human-machine dialog systems with a focus on the various dialog models. More specifically, we first introduce the fundamental process of establishing a dialog model. Second, we examine the features and classifications of the system dialog model, expound some representative models, and also compare the advantages and disadvantages of different dialog models. Third, we comb the commonly used database and evaluation metrics of the dialog model. Furthermore, the evaluation metrics of these dialog models are analyzed in detail. Finally, we briefly analyze the existing issues and point out the potential future direction on the human-machine dialog systems.
机译:随着传统机器学习(ML)到深度学习(DL)和强化学习(RL)的快速发展,配备学习机制的对话系统已成为解决人机交互问题的最有效解决方案。本文的目的是对基于学习的人机对话系统提供全面的调查,重点是各种对话框模型。更具体地说,我们首先介绍建立对话模型的基本过程。其次,我们检查系统对话框模型的功能和分类,阐述了一些代表性模型,并比较了不同对话框模型的优缺点。第三,我们梳理对话框模型的常用数据库和评估度量。此外,详细分析了这些对话框模型的评估度量。最后,我们简要介绍了现有问题,并指出了人机对话系统的潜在未来方向。

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