Multi-role identification of sentences using Relevance Vector Space

A. Prayote, Watcharet Kuntichod
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引用次数: 0

Abstract

This paper presents a solution to classifying sentences with multi-labels. This problem is an essential part to a semantic search process. Sentences or keywords with correctly automated labelling can enhance the efficiency and performance of the search. The technique introduces a vector space of relevance for keywords and sentences with necessary operations. Concepts and motivation are explained with mathematical models for the two vectors and their operations. Experiments of multi-role identification of sentences are conducted with abstracts of scientific articles. Procedures of executing models in the experiment are explained step by step. In comparison, nine other techniques of multi-label classification are used on the same data set. The evaluation is done on 4-fold cross validation basis. The study reveals a successful result of multi-role identification of sentences with higher accuracy than other nine techniques.
基于关联向量空间的句子多角色识别
提出了一种多标签句子分类的解决方案。这个问题是语义搜索过程的一个重要组成部分。正确自动标记的句子或关键字可以提高搜索的效率和性能。该技术为具有必要操作的关键字和句子引入了一个相关向量空间。概念和动机解释了数学模型的两个向量和他们的操作。以科技文章摘要为对象,进行了句子多角色识别实验。并逐步说明了模型在实验中的执行步骤。相比之下,在同一数据集上使用了其他九种多标签分类技术。评价是在4次交叉验证的基础上进行的。研究结果表明,多角色识别的结果比其他九种技术具有更高的准确性。
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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