基于数据挖掘和本体的即时通讯和社交网站即时消息监控框架

Mohammed M. Ali, Khaja Moizuddin Mohammed, L. Rajamani
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引用次数: 27

摘要

通过无法追踪的即时通讯工具(IM)和社交网站(SNS)发送的恐怖和可疑信息数不胜数,给网络通信和网络安全造成了阻碍。我们提出了一个框架,用于发现和预测使用IM或Facebook、Twitter、LinkedIn等SNS发送的此类消息。此外,这些即时消息被置于监视之下,以识别罪犯的可疑网络威胁活动类型以及他们的个人详细信息。框架采用基于本体的信息抽取技术(OBIE)、关联规则挖掘(ARM)(一种具有预定义的基于知识的规则(逻辑)的数据挖掘技术),从领域专家和GTD(全球恐怖分子数据库)等可疑数据集的过去学习经验中学习决策过程。所获得的实验结果将有助于迅速做出根除网络犯罪的决策。
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Framework for surveillance of instant messages in instant messengers and social neworking sites using data mining and ontology
Innumerable terror and suspicious messages are sent through Instant Messengers (IM) and Social Networking Sites (SNS) which are untraced, leading to hindrance for network communications and cyber security. We propose a Framework that discover and predict such messages that are sent using IM or SNS like Facebook, Twitter, LinkedIn, and others. Further, these instant messages are put under surveillance that identifies the type of suspected cyber threat activity by culprit along with their personnel details. Framework is developed using Ontology based Information Extraction technique (OBIE), Association rule mining (ARM) a data mining technique with set of pre-defined Knowledge-based rules (logical), for decision making process that are learned from domain experts and past learning experiences of suspicious dataset like GTD (Global Terrorist Database). The experimental results obtained will aid to take prompt decision for eradicating cyber crimes.
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