The Forensic Algorithm on Facebook Using Natural Language Processing

M. Ketcham, Thittaporn Ganokratanaa, Sasiprapa Bansin
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引用次数: 12

Abstract

These days, social media has played a significant role in daily life of all people and ages in order to communicate as well as express their thoughts and feelings. In this paper, the authors have studied user data from social media (Facebook) whose shared posts are positive, and also the negative side posts that may lead to negative affect personally or can be further extended to the community and nation level. The purposes are to identify users who have commented on the negative side that may be a lawbreaker on Computer related crime. On this which beneficial about investigation for legal proceeding and it facilitate for the police or people who take a part in the operation on law. It also contributes in the community at large to peacefulness. The effective Naïve-Bayes classifier is used in order to classify these two user groups. It significantly shows that analyzing social media data by using Naïve Bayes model presented sharing positive and negative views accurately as well as reflects satisfied results.
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使用自然语言处理的Facebook取证算法
如今,社交媒体在所有人和年龄层的日常生活中发挥了重要作用,以交流和表达他们的想法和感受。在本文中,作者研究了来自社交媒体(Facebook)的用户数据,其中分享的帖子是积极的,也包括可能导致个人负面影响或可以进一步扩展到社区和国家层面的负面帖子。目的是识别那些在计算机相关犯罪中可能是违法者的负面评论的用户。这有利于法律程序的侦查,也便于公安人员或参与执法人员的执法。它还有助于整个社区的和平。使用有效的Naïve-Bayes分类器对这两个用户组进行分类。显著表明,利用Naïve贝叶斯模型分析社交媒体数据,既能准确地分享正面观点和负面观点,又能反映出令人满意的结果。
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