基于文本挖掘的Twitter数据谣言检测

Manita ., Mayank Jain
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引用次数: 0

摘要

-谣言是一种误导性的信息,在传播时不持久,在核实时不真实。换句话说,谣言是一组语言、符号或触觉上的命题,其真实性不会很快得到证实。随着社交网站的普及,近年来,不正确的信息和谣言广泛传播,对人们的生活造成了重大影响。微博平台是一种极好的传播谣言的方式,并在关键情况下自动辟谣。现有的检测谣言的方法依赖于利用机器学习算法手工制作的特征,这需要大量的人工努力。在这项工作中,我们使用了文体特征和词向量特征,并将它们放入机器学习模型中。这些特征是从twitter-16数据集中提取的,通过应用支持向量机,与现有的最新研究相比,我们获得了最高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text Mining based Rumor Detection on Twitter data
- Rumors are misleading information that is not sustained at the time of circulation and are not true at the time of verification. In other words, Rumors are a set of linguistic, symbolic or tactile propositions whose veracity is not quickly or ever confirmed. As the popularity of social networking sites has increased, in recent years, incorrect information and rumors have circulated widely causing a significant influence on people’s lives. Microblogging platforms are an excellent way to spread rumors and automatically disprove them in critical situations. Existing approaches to detecting rumors have depended on hand-crafted features for utilizing machine learning algorithms, which necessitates a significant amount of manual effort. In this work, we have used stylometric and word vector features and put them into machine learning models. These features are extracted from the twitter-16 dataset and by applying SVM, we have attained the highest accuracy in comparison to existing newest studies.
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