基于语义重组的改进问答系统

Muthukrishanan Umamehaswari, M. Ramprasath, S. Hariharan
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引用次数: 22

摘要

在问答系统(QAS)中,大量的文本信息以电子形式可访问,并且需要为用户的问题提供正确的答案,这是一项重要任务。问答系统是信息检索系统的一种形式,其目的是为用户的问题提供准确的答案,而不是整个文档。为了满足这一用户需求,可以使用基于语义的重新表述技术从搜索引擎检索到的大量文档中检索到准确的答案。目标是基于词法、语义和句法约束从web中生成模式。应该在问答系统中定义这些约束,以便对候选答案进行评估和排序。在这里,我们使用TREC-8, TREC-9和TREC-10收集作为训练集。不同类型的问题和相应的答案可以从TREC集合中使用。建议的系统自动从TREC集合中检索答案。Word net可以帮助建立问答对之间的语义关系和句法标记。最后根据每个候选答案的长度、问题与答案对之间的语义相似度以及关键字之间的距离来给予权重。本文提出的问答系统不同于其他基于重构的问答系统。在TREC数据集上的实验将显示出较好的结果,可以利用查准率和查全率进行计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Question Answering System by semantic refomulation
A unbearable amount of textual information accessible in electronic form and need to deliver correct answer to user question is important task in Question Answering System (QAS). Question answer system is the form of information retrieval system which aims to deliver the exact answer to the user question rather than whole document. To answer this user need semantic based reformulation techniques can be used to retrieve the accurate answer from enormous number of document retrieved from the search engine. The goal is to generate the pattern from the web based on lexical semantic and syntactic constrain. These constrain should be defined in the question answering system to evaluate and rank the candidate answer. Here we used TREC-8, TREC-9, and TREC-10 collection as training set. Different types of question and corresponding answer can use from TREC collection. The proposed system retrieves the answer automatically from TREC collection. Word net can be used to help the semantic relation and syntactic tag between the questions and answer pair. Finally weight can be given to each candidate answer according to their length, the level of semantic similarity between question and answer pair and distance between the key word. The proposed QAS be different from other reformulation based Question answering system. The experiments on the TREC data set will show the better result which can be calculated with help of the precision and recall.
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