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Social Big Data Mining Framework for Extremist Content Detection in Social Networks

机译:社交网络中的极端主义内容检测的社会大数据挖掘框架

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Social networks provide the platform for flows of ideas and affordable and global online communications. Many people use social networks to communicate and express their opinions in supporting or opposing different causes, with most of this user-generated content being textual information. As there are a lot of raw data of people posting real time messages about their opinions on a variety of topics in daily life, it is a worthwhile research endeavor to collect and analyze these data, which may be useful for government to make informed decisions or to monitor public opinion. Data available in social media is obviously only one type of information that can be of interest when trying to detect a possible terrorist or radical group, there are several cases for example in which the social media has been used by radical thinkers to act as influencers and encourage fanatics with the same radical views to take violent action. Therefore, in this paper, we propose a framework for opinion mining and extremist content detection in on line social media data. Social media data targeted in this work to analyze, is the public text post on Facebook, the most popular social networking site. With this framework, machines can learn how to automatically extract the set of messages from Facebook public pages, using API graph calls, filter out non-opinion messages. determine their sentiment regarding the issue of interest directions (i.e. positive, negative) and detect violent or extremist content. The purpose of this model is to build a Big Data application that gets stream of public data from Facebook social network, which can help law enforcement and cybercrime analysts with analyzing and monitoring social media, in the search of digital trace of violence or radicalism, that can be exploited in further digital forensic investigation.
机译:社交网络提供了思想流和经济实惠的平台和全球在线通信。许多人使用社交网络进行沟通,并表达他们在支持或反对不同原因方面的意见,其中大多数用户生成的内容是文本信息。由于人们有很多人发布了关于他们关于日常生活各种主题的看法的实时信息,因此努力收集和分析这些数据是一个有价值的研究,这可能对政府做出明智的决定或者监测舆论。社交媒体上可用的数据显然只有一种类型的信息,可以在尝试检测可能的恐怖主义或激进的组时具有感兴趣的信息,例如,有几种情况,其中社会媒体已经被激进的思想家用作影响者和影响者鼓励狂热的观点,以采取暴力行动。因此,在本文中,我们提出了一种在线社交媒体数据的意见挖掘和极端主义内容检测框架。在这项工作中的社交媒体数据进行分析,是Facebook上的公共文字帖子,是最受欢迎的社交网站。使用此框架,计算机可以了解如何自动从Facebook公共页面自动提取消息集,使用API​​图形呼叫,过滤掉非意见消息。确定他们关于兴趣问题问题的情绪(即积极,负面)和检测暴力或极端主义内容。该模型的目的是建立一个大数据应用程序,这些应用程序从Facebook社交网络获取公共数据流,这可以帮助执法和网络犯罪分析师进行分析和监测社交媒体,寻求数字痕迹的暴力或激进主义,这可以在进一步的数字法医调查中剥削。

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