使用被动攻击分类器检测文本宣传

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引用次数: 0

摘要

如今,社交媒体活动,特别是通过网络传播的新闻,是知识的主要来源。人们在互联网生活中搜索和咀嚼新闻,因为信息的低成本、容易获取、快速传播。Twitter作为最知名的持续新闻来源之一,也恰好是最主要的新闻传播媒体之一。人们已经知道,它传播流言蜚语的片段会造成重大伤害。在线客户端通常容易受到影响,他们在基于web的网络媒体上所做的一切都被认为是值得信赖的。因此,自动检测假冒宣传对于维持活跃的在线媒体和非正式组织至关重要。为了计算机化Twitter数据集中的宣传新闻识别,本研究开发了一种技术,通过找出如何预测精度评估来识别推文中的宣传文本信息。本文提出了一种监督式机器学习技术——被动主动分类器,该分类器使用计数矢量器和术语频率逆文档频率矢量器作为特征提取,根据相应文章的极性检测宣传新闻。最后,该算法使用了43000条记录的数据集,显示出较好的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Textual Propaganda Using Passive Aggressive Classifiers
Nowadays, social media activity, particularly news that spreads over the network, is a major source of knowledge. People search out and chew up news from internet-based living because of the low effort, easy access, and rapid dissemination of information. Twitter, as one of the most wellknown continuing news sources, also happens to be one of the most dominant news disseminating media. It has already been known to wreak significant harm by disseminating snippets of gossip. Online clients are typically susceptible, and everything they do on web-based networking media is assumed to be trustworthy. As a result, automating counterfeit propaganda detection is critical to maintaining a vibrant online media and informal organization. In order to computerize propaganda news identification in Twitter datasets, this research develops a technique for recognizing propaganda text messages from tweets by figuring out how to anticipate precision evaluations. This paper proposes a supervised machine learning technique, Passive aggressive classifiers that uses Count Vectorizer and Term FrequencyInverse Document Frequency Vectorizer as feature extraction to detect propaganda news based on the polarity of the corresponding article. Finally, this algorithm uses dataset with 43000 records and shows good accuracy.
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