欺凌帖子检测的分类模型

K. Nalini, L. Jabasheela
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摘要

如今,许多研究任务都集中在社交媒体上,用于分析情绪和观点、政治问题、营销策略等等。已经为不同的应用程序设计了几种文本挖掘结构。骚扰是一种声称社会动荡的不同结构和行为对一个人或群体,伤害他人。调查结果显示,每10名青少年中就有7人成为网络欺凌的受害者。在世界范围内,由于网络上的不良通信而存在许多突出的案例。因此,这个问题可能有合适的解决方案,有必要消除现有策略在处理网络欺凌事件问题方面的不足。一个突出的目标是设计一个方案来提醒那些使用社交网络的人,并防止他们进入欺凌环境。Tweet语料库包含文本中的消息,并具有ID、时间等。这些信息以非正式的形式传递,而且方言也多种多样。因此,在特征提取和频率提取之前,需要操作一系列过滤来处理原始tweet。其思想是将每条推文看作是对基本主题安排的有限混合,每条推文都是通过文字传播来描述的,然后通过这种主题分散来分析推文。当然,欺凌话题可能与欺凌词的高概率相关。在一个可以从tweet中导出主题分布的模型中,需要对包含欺凌文本和非欺凌文本的训练tweet进行排列。主题建模用于获取不相关内容中的词汇搭配设计,并为模型创建有意义的主题。
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Classification Model for Bullying Posts Detection
Nowadays, many research tasks are concentrating on Social Media for Analyzing Sentiments and Opinions, Political Issues, Marketing Strategies and many more. Several text mining structures have been designed for different applications. Harassing is a category of claiming social turmoil in different structures and con-duct toward a singular or group, to damage others. Investigation outcomes demonstrated that 7 young people out of 10 become the casualty of cyber bullying. Throughout the world, many prominent cases are existing due to the bad communications over the Web. So there could be suitable solutions for this problem and there is a need to eradicate the lacking in existing strategies in dealing problems with cyber bullying incidents. A prominent aim is to design a scheme to alert the people those who are using social networks and also to prevent them from bullying environments. Tweet corpus carries the messages in the text as well as it has ID, time, and so forth. The messages are imparted in informal form and furthermore, there is variety in the dialect. So, there is a requirement to operate a progression of filtration to handle the raw tweets before feature extraction and frequency extraction. The idea is to regard each tweet as a limited blend over a basic arrangement of topics, each of which is described by dissemination over words, and after that analyze tweets through such topic dispersions. Naturally, bullying topics might be related to higher probabilities for bullying words. An arrangement of training tweets with both bullying and non-bullying texts are required to take in a model that can derive topic distributions from tweets. Topic modeling is used to get lexical collocation designs in the irreverent content and create significant topics for a model.
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