Human and Organizational Threat Profiling Using Machine Learning

P. M. I. N. Kumara, K. G. S. Dananjaya, N. Amarasena, H. M. S. Pinto, K. Yapa, L. Rupasinghe
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Abstract

The usage of online social networking sites is increasing rapidly. But the downside is that the growth of various kinds of ongoing social media threats such as fake profiles, cyberbullying, and fake news. Many important observations can be made to increase the existing knowledge about social media threats by studying various information exchanged through public and organizations. One direction is to conduct studies on human behavior and personality traits using public user profile data and the organizational threat classifying. This research aims to build a system to predict human personality behaviors on social media profiles based on the OCEAN Model and company-based threat profiling. All the data collected relating to everyone in the consumer’s friend list is analyzed to obtain the threatening behaviors and classified according to the OCEAN to generate a threat report. Organizational network gathered log data for filtered log protection against malware. Logs received from these endpoints will be collected by collectors. Those logs will be forwarded to our filter, made of a Machine Learning Algorithm (MLA). This will be a custom MLA specially designed for this purpose. MLA will classify and categorize threats according to their severity, filtered log protection system against malware and other threats.
使用机器学习的人类和组织威胁分析
在线社交网站的使用正在迅速增加。但不利的一面是,各种各样的社交媒体威胁正在不断增加,比如虚假个人资料、网络欺凌和假新闻。通过研究通过公众和组织交换的各种信息,可以得出许多重要的观察结果,以增加对社交媒体威胁的现有知识。一个方向是利用公共用户档案数据和组织威胁分类对人类行为和人格特征进行研究。本研究旨在建立一个基于OCEAN模型和基于公司的威胁分析的社交媒体个人资料人格行为预测系统。收集到的与消费者好友列表中每个人相关的所有数据进行分析,以获得威胁行为,并根据OCEAN进行分类,生成威胁报告。组织网络收集日志数据,用于过滤恶意软件的日志保护。从这些端点接收到的日志将由收集器收集。这些日志将被转发到我们的过滤器,由机器学习算法(MLA)组成。这将是一个专门为此目的而设计的定制MLA。MLA将根据威胁的严重程度对其进行分类和分类,过滤日志保护系统针对恶意软件和其他威胁。
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