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A Novel Graph Centrality Based Approach to Analyze Anomalous Nodes with Negative Behavior

机译:一种基于图中心性的负行为异常节点分析方法

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Detection of different kinds of anomalous behaviors originating from negative ties among actors in online social networks is an unexplored area requiring extensive research. Due to increase in social crimes such as masquerading, bullying, etc., identification and analysis of these activities has become need of the hour. Approaches from two separate, yet, similar research areas, i.e. anomaly detection and negative tie analysis, can be clubbed together to identify negative anomalous nodes. Use of best measures from centrality based (negative ties) and structure based approaches (anomaly detection) can help us identify and analyze the negative ties more efficiently. A comparative analysis has been performed to detect the negative behaviors in online networks using different centrality measures and their relationship in curve fitting anomaly detection techniques. From results it is observed that curve fitting analysis of centrality measures relationship performs better than independent analysis of centrality measures for detecting negative anomalous nodes.
机译:在线社交网络中,由于行为者之间的负面联系而导致的各种异常行为的检测是一个尚未探索的领域,需要进行广泛的研究。由于伪装,欺凌等社会犯罪行为的增加,识别和分析这些活动已成为当务之急。可以将来自两个单独但相似的研究领域的方法(即异常检测和负关联分析)组合在一起以识别负异常节点。使用基于中心性(负联系)和基于结构的方法(异常检测)中的最佳度量可以帮助我们更有效地识别和分析负联系。已经进行了比较分析,以使用不同的中心度度量及其在曲线拟合异常检测技术中的关系来检测在线网络中的负面行为。从结果可以看出,集中度度量关系的曲线拟合分析比独立度的集中度度量分析对负异常节点的检测效果更好。

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