Topic and user based refinement for competitive perspective identification

Junjie Lin, W. Mao, D. Zeng
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引用次数: 2

Abstract

The competitive perspective implied in online texts reflect people's conflicts in their stances and viewpoints. Competitive perspective identification aims to determine people's inclinations to one of multiple competitive perspectives, which is an important research issue and can facilitate many security-related applications. As the word usage of different perspectives is distinct in various topics, in this paper, we first proposes a supervised topic-refined method for competitive perspective identification. Our method refines perspective classifiers with the document-topic distributions mined from texts. To reduce human labor in data annotation, we further extend our work in a semi-supervised manner and propose a user-based bootstrapping framework. As the perspectives people hold are relatively stable, our bootstrapping process leverages the user-level perspective consistency to select high-quality classified texts from unlabeled corpus and boost the perspective classifier iteratively. Experimental studies show the effectiveness of our proposed approach in identifying the competitive perspectives of online texts.
基于主题和用户的竞争视角识别细化
网络文本隐含的竞争视角反映了人们在立场和观点上的冲突。竞争视角识别旨在确定人们对多种竞争视角之一的倾向,这是一个重要的研究问题,可以促进许多与安全相关的应用。鉴于不同视角在不同主题中的用词不同,本文首先提出了一种有监督的主题精炼竞争视角识别方法。我们的方法使用从文本中挖掘的文档主题分布来改进透视图分类器。为了减少数据标注中的人力劳动,我们以半监督的方式进一步扩展了我们的工作,并提出了一个基于用户的自举框架。由于人们持有的视角相对稳定,我们的自举过程利用用户层面的视角一致性从未标记的语料库中选择高质量的分类文本,并迭代地增强视角分类器。实验研究表明,我们提出的方法在识别在线文本的竞争视角方面是有效的。
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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