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Chinese Question-Answering System

机译:中文答疑系统

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摘要

Traditional Chinese text retrieval systems return a ranked list of documents in response to a user's request. While a ranked list of documents may be an appropriate response for the user, frequently it is not. Usually it would be better for the system to provide the answer itself instead of requiring the user to search for the answer in a set of documents. Since Chinese text retrieval has just been developed lately, and due to various specific characteristics of Chinese language, the approaches to its retrieval are quite different from those studies and researches proposed to deal with Western language. Thus, an architecture that augments existing search engines is developed to support Chinese natural language question answering. In this paper a new approach to building Chinese question-answering system is described, which is the general-purpose, fully-automated Chinese quest ion-answering system available on the web. In the approach, we attempt to represent Chinese text by its characteristics, and try to convert the Chinese text into ERE (E: entity, R: relation) relation data lists, and then to answer the question through ERE relation model. The system performs quite well giving the simplicity of the techniques being utilized. Experimental results show that question-answering accuracy can be greatly improved by analyzing more and more matching ERE relation data lists. Simple ERE relation data extraction techniques work well in our system making it efficient to use with many backend retrieval engines.
机译:繁体中文文本检索系统响应于用户的请求返回排序的文档列表。虽然文档的排序列表对于用户可能是适当的响应,但通常不是。通常,系统自己提供答案而不是要求用户在一组文档中搜索答案会更好。由于中文文本检索是最近才发展起来的,并且由于中文的各种特殊特征,其检索方法与那些针对西方语言的研究和研究有很大的不同。因此,开发了增强现有搜索引擎的体系结构以支持中文自然语言问答。本文介绍了一种构建中文问答系统的新方法,这是一种通用,全自动的网上中文问答系统。在这种方法中,我们尝试通过其特征来表示中文文本,并尝试将中文文本转换为ERE(E:实体,R:关系)关系数据列表,然后通过ERE关系模型来回答问题。该系统运行良好,给出了所使用技术的简单性。实验结果表明,通过分析越来越多的匹配ERE关系数据列表,可以大大提高问答的准确性。简单的ERE关系数据提取技术在我们的系统中运行良好,从而使其可以有效地与许多后端检索引擎一起使用。

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