数据挖掘在监控中的应用:检测社交网络上的可疑活动

F. Harrag, Ali Alshehri
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引用次数: 2

摘要

在人类安全受到人为和自然灾害威胁的当今时代,监测系统变得极其重要。但是,即使有高清(HD)安全摄像机和人力全天候监控,由于人为错误而丢失重要信息的可能性仍然存在。除此之外,雇用足够数量的人从事这项工作也并不总是可行的。解决方案在于一个系统,该系统允许通过分类和其他数据挖掘技术进行自动监视,这些技术可用于从这些输入中提取有用的信息。本研究提出了一种基于数据挖掘的监控框架。该研究包括使用混合数据挖掘技术对来自不同网络的数据进行解释。为了验证混合数据挖掘技术的有效性,利用了一个包含可疑群体网络的在线数据集,并对网络的主要领导者进行了识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Data Mining in Surveillance: Detecting Suspicious Activity on Social Networks
In the current times where human safety is threatened by man-made and natural calamities, surveillance systems have gained immense importance. But, even in presence of high definition (HD) security cameras and manpower to monitor the live feed 24/7, room for missing important information due to human error exists. In addition to that, employing an adequate number of people for the job is not always feasible either. The solution lies in a system that allows automated surveillance through classification and other data mining techniques that can be used for extraction of useful information out of these inputs. In this research, a data mining-based framework has been proposed for surveillance. The research includes interpretation of data from different networks using hybrid data mining technique. In order to show the validity of the proposed hybrid data mining technique, an online data set containing network of a suspicious group has been utilized and main leaders of network has been identified.
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