Developing a Complete Dialogue System Using Long Short-Term Memory

Muhammad Husain Toding Bunga, S. Suyanto
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引用次数: 11

Abstract

As technologies of natural language understanding and generation improve, the human interest towards human-computer interaction increases. The technologies can be applied for various applications of customer services. Most works related to this field are emphasizing on single sentence and speaker turn. Meanwhile, a conversation sometimes has its own context according to the previous one. Designing this kind of conversational system is challenging. Most conversational agents are built based on knowledge-based and rule based systems. This paper discusses a development of a complete dialogue system to understand the intent of a text and give response based on the dialogue state. The dialogue model is implemented using the combination of rule-based and data-driven approach by utilizing a long short-term memory (LSTM). Some experiments show that the developed system give a high performance. A detail observation informs that some errors come from the intent classifier that fails to classify some sentences not in the corpus. This system can be improved by increasing the performance of the intent classifier and incorporating an additional named entity recognition module.
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利用长短期记忆开发完整的对话系统
随着自然语言理解和生成技术的提高,人们对人机交互的兴趣也在增加。这些技术可以应用于客户服务的各种应用。这一领域的大部分研究都着重于单句和说话人的转向。与此同时,对话有时根据前一个上下文有自己的上下文。设计这种对话系统是具有挑战性的。大多数会话代理都是基于知识和规则系统构建的。本文讨论了一个完整的对话系统的开发,以了解文本的意图,并根据对话状态给出回应。该对话模型通过利用长短期记忆(LSTM),采用基于规则和数据驱动的方法相结合的方式实现。实验表明,所开发的系统具有良好的性能。详细的观察表明,一些错误来自于意图分类器,它没有对语料库中的一些句子进行分类。该系统可以通过提高意图分类器的性能和加入一个额外的命名实体识别模块来改进。
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