Identifying Provenance of Information and Anomalous Paths in Attributed Social Networks

Hetuk Trivedi, P. Bindu, P. S. Thilagam
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Abstract

Information provenance problem is an important and challenging problem in social network analysis and it deals with identifying the origin or source of information spread in a social network. In this paper, an approach for detecting the source of an information spread as well as suspicious anomalous paths in a social network is proposed. An anomalous path is a sequence of nodes that propagates an anomalous information to the given destination nodes who cause an anomalous event. The proposed approach is based on attribute-based anomalies and information cascading technique. The anomalous paths are identified in two steps. The first step assigns an anomalous score to each and every vertex in the given graph based on suspicious attributes. The second step detects the source and suspicious anomalous paths in the network using the anomaly scores. The approach is tested on datasets such as Enron and Facebook to demonstrate its effectiveness. Detecting anomalous paths is useful in several applications including identifying terrorist attacks communication path, disease spreading pattern, and match-fixing hidden path between bookie and a cricketer.
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在属性社会网络中识别信息来源和异常路径
信息来源问题是社会网络分析中的一个重要问题,它涉及识别社会网络中传播的信息的来源或来源。本文提出了一种在社交网络中检测信息传播源和可疑异常路径的方法。异常路径是将异常信息传播到导致异常事件的给定目标节点的节点序列。该方法基于基于属性的异常和信息级联技术。异常路径的识别分两步进行。第一步是根据可疑属性为给定图中的每个顶点分配异常分数。第二步使用异常分数检测网络中的源异常和可疑异常路径。这种方法在安然(Enron)和Facebook等数据集上进行了测试,以证明其有效性。检测异常路径在许多应用中是有用的,包括识别恐怖袭击的通信路径,疾病传播模式,以及赌徒和板球运动员之间的假球隐藏路径。
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