基于情感分类的Facebook用户关系分析

D. Terrana, A. Augello, G. Pilato
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引用次数: 21

摘要

它提出了一种方法,旨在分析Facebook用户或组的主页,以便自动检测谁讨论了什么以及如何讨论。用户共享的所有公共帖子都由专门构建的爬虫检索。提取每个帖子的文本消息、评论、喜欢等信息。每个帖子都被归类为属于一组预定义的类别,其情绪也被检测为积极,消极或中性。因此,对该帖子的所有评论都会根据其情绪极性进行分析和分类。对于每个类别,它都创建了一个图表,其中突出显示了帖子和相关评论之间的情绪一致性。因此,该图可用于根据情感分类分析用户关系。
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Facebook Users Relationships Analysis Based on Sentiment Classification
It is presented an approach aimed at analyzing the homepage of a Facebook user or group in order to automatically detect who has discussed what and how it has been discussed. All public posts shared by an user are retrieved by an ad hoc built crawler. Information such as a text messages, comments, likes, is extracted for each post. Each post is classified as belonging to a set of predefined categories and its sentiment is also detected as being positive, negative or neutral. All the comments to that post are therefore analyzed and categorized together with its sentiment polarity. For each category it is created a graph where it is highlighted the concordance of sentiment between the posts and the related comments. The graph can be therefore used to profile the user relationships according to sentiment classification.
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