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Anti-Social Behavior Detection in Urdu Language Posts of Social Media

机译:社交媒体乌尔都语帖子中的反社会行为检测

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Social media such as Facebook and Twitter has gained strong attention for sharing information, worldwide connectivity and brand marketing all over the globe. The prevalent use of social networking sites has produced exceptional amounts of data. The mining of these social media applications has its potential to excerpt illegal activities which may be helpful for individuals, business and customers. The mining of data obtained from Facebook and Twitter, can be used to predict emotions of stakeholder and its analysis can provide very valuable information regarding behavioral inclinations of the writer. The automatic sentiment analysis to detect the emotional content in textual data has been widely used in many research fields. Most of the existing sentiment analysis techniques are tailored for English Language. This paper presents Urdu based antisocial behavior detection (ASB). We aim in particular to establish antisocial behavior detection method and defining its emotional state. We are intended to introduce a sentiment analysis based behavioral model that describes emotions related to antisocial behavior. In addition to describing the negative emotional state, our model will also use the concept of behavioral tendencies and evidence to predict the possible behavior of social media activists based on input text. We will outline the design of behavior detection systems based on social media posts. The learning algorithm learn about emotions from social media posts in the Roman Urdu language to predict user’s behavior regarding any specific post. The results of this study has verified that our method has outperformed state-of-the-art methods in terms of accuracy. A bilingual or multilingual ASB approach can be made in future.
机译:诸如Facebook和Twitter之类的社交媒体在全球范围内共享信息,全球连接和品牌营销方面受到了广泛关注。社交网站的普遍使用产生了大量数据。这些社交媒体应用程序的挖掘具有摘录非法活动的潜力,这可能对个人,企业和客户有所帮助。从Facebook和Twitter获得的数据的挖掘可用于预测利益相关者的情绪,其分析可提供有关作者行为倾向的非常有价值的信息。用于检测文本数据中的情感内容的自动情感分析已在许多研究领域中得到广泛使用。现有的大多数情感分析技术都是针对英语量身定制的。本文介绍了基于乌尔都语的反社会行为检测(ASB)。我们特别旨在建立反社会行为检测方法并定义其情绪状态。我们打算介绍一种基于情绪分析的行为模型,该模型描述与反社会行为相关的情绪。除了描述负面的情绪状态外,我们的模型还将使用行为趋势和证据的概念,根据输入文本来预测社交媒体活动家的可能行为。我们将概述基于社交媒体帖子的行为检测系统的设计。该学习算法从罗马乌尔都语社交媒体帖子中了解情绪,以预测用户对任何特定帖子的行为。这项研究的结果证实了我们的方法在准确性方面优于最新方法。将来可以使用双语或多语种ASB方法。

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