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A Study of Radicalism Contents Detection in Twitter: Insights From Support Vector Machine Technique

机译:Twitter中的激进主义内容检测研究:支持向量机技术的启示

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Social media has been widely used to target, coordinate, disseminate and embed radicalism doctrine to the society. Radicalism gives destructive impacts to an attacked country and the global society. It is not only makes a serious threat to a nation unity, yet it also impacts the cultural, socio-political, and economic among the others. This study is aim to study radicalism intention using content detection. The model was developed using social media content like posting, comment and conversation to indicate the level of radicalism. Data was collected from a Twitter. It has chosen as a social media platform because Twitter can engage the community with powerful and impactful microblogging function. The data was analyzed using machine learning. To be specifically, a Support Vector Machine (SVM) in text mining employed for classification of Twitter's content in national language of republic Indonesia. There were two focus keywords used in this study. The first one is ISIS and follow by Syria. The result shows that 83.3% accuracy of test set tuples, 90% part of the contents indicates positive link to radicalism with no-radicalism class as a precision value. Besides recall value was calculated for accuracy, 95% and 82% part of actual text positively link as radicalism class with a proxy of no-radicalism class. This model is hoped to detect and overcome the terrorism issue in Indonesia.
机译:社交媒体已被广泛用于针对,协调,传播激进主义学说并将其嵌入社会。激进主义给受害国家和全球社会带来破坏性影响。它不仅严重威胁民族团结,而且还影响其他国家的文化,社会政治和经济。本研究旨在利用内容检测来研究激进主义意图。该模型是使用社交媒体内容(例如发布,评论和对话)开发的,用于指示激进主义的水平。数据是从Twitter收集的。它之所以被选为社交媒体平台,是因为Twitter可以通过强大而有影响力的微博功能与社区互动。使用机器学习对数据进行了分析。具体而言,在文本挖掘中使用了一种支持向量机(SVM),以印度尼西亚共和国的本国语言对Twitter的内容进行分类。在这项研究中使用了两个焦点关键词。第一个是ISIS,叙利亚紧随其后。结果表明,测试集元组的准确度为83.3%,部分内容的90%表示与激进主义的积极联系,其中以非激进主义类别为精确度值。除了计算召回值是为了确保准确性外,实际文本的95%和82%部分作为激进主义阶级与非激进主义阶级的代名词正相关。希望这种模式能够发现并克服印度尼西亚的恐怖主义问题。

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