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AD-C: a new node anomaly detection based on community detection in social networks

机译:AD-C:基于社区检测的新节点异常检测

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摘要

Anomaly detection in social networks as a challenging task has gained great attention. Every unusual behavioural pattern in a social network can be spotted as an anomaly which provides useful information. In this paper, a new method is proposed to identify anomaly based on community detection (AD-C) for the social network graph. Our model is made up of weighting in pre-processing step and three principle processes, including community detection, auxiliary community detection and node filtering. AD-C method offers a flexible framework for anomaly detection, which can be employed in different stages of its related algorithms. The experiments are conducted on two social media datasets, including Facebook and Flickr datasets. Experimental results indicate more efficiency in comparison to other anomaly methods as baselines in terms of the F-score. Also, the results indicate that applying the proposed steps lead to increased accuracy of the community detection methods.
机译:社交网络中的异常检测作为一个具有挑战性的任务,才会受到很大的关注。可以发现社交网络中的每个不寻常的行为模式作为异常提供有用信息。在本文中,提出了一种基于社区检测(AD-C)来鉴定社会网络图的异常的新方法。我们的模型由预处理步骤和三个原理过程中的加权组成,包括社区检测,辅助群落检测和节点过滤。 AD-C方法为异常检测提供灵活的框架,可用于其相关算法的不同阶段。实验是在两个社交媒体数据集中进行的,包括Facebook和Flickr数据集。实验结果表明与其他异常方法相比,与F分数相比,与基线相比。此外,结果表明,施加所提出的步骤导致社区检测方法的准确性提高。

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