基于语义相似度的主题评价增强信息过滤

Hanh Nguyen, Yue Xu, Yuefeng Li
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引用次数: 1

摘要

主题建模已经在数据挖掘、文本挖掘、机器学习和信息过滤等领域得到了成功的应用。这种方法的局限性在于,从建模语料库生成的主题的质量并不总是很好,因为许多主题包含侵入性和歧义性的单词。这个缺点会影响基于主题模型的基于文本的应用系统的性能。因此,在将主题应用于基于文本的应用程序之前,对主题进行评估和排序对于高质量的主题非常重要。在本研究中,我们提出了一种基于本体的增强信息过滤的主题评价方法,称为STRbTCM。该模型通过将主题模型与美国图书馆会议主题标题本体中的标题进行匹配来评估主题的质量。为了评估我们提出的模型的有效性,我们将该模型与现有的两种应用于信息过滤系统的主题评估方法进行了比较。此外,我们还将我们提出的模型与基于术语的模型BM25和其他两个基于主题的模型(TNG和LDA_words)进行了比较。通过大量的实验,我们发现我们提出的模型在四个主要评价指标上优于其他基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Semantic Similarity Based Topic Evaluation for Enhancing Information Filtering
Topic Modelling has been applied in many successful applications in data mining, text mining, machine learning and information filtering. The limitation is that the quality of topics generated from modelled corpus are not always good because many topics contain intrusive and ambiguous words. This negative drawback would affect the performance of text based application systems based on topic models. Hence, topic evaluation to assess and to rank the topics is really important for the good quality topics before applying those topics to text based applications. In this study, we proposed an ontology-based topic evaluation method for enhancing information filtering, named as STRbTCM. This new model assesses the quality of topics by matching topic models with headings in Library Congress Subject Heading (LCSH) ontology. To evaluate the effectiveness of our proposed model, we compare the model with two existing topic evaluation methods applied to information filtering system. In addition, we also compare our proposed model to term-based model BM25 and two other models based on topics: TNG and LDA_words. Through extensive experiments, we find that our proposed model performed better than other baseline models according to four main evaluating measures.
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