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Unsupervised Anomaly Detection Algorithm of Graph Data Based on Graph Kernel

机译:基于图核的图数据无监督异常检测算法

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摘要

Nowadays, there are a lot of graph data in many fields such as biology, medicine, social networks and so on. However, it is difficult to detect anomaly and get the useful information if we want to apply the traditional algorithms in graph data. Statistical pattern recognition and structural pattern recognition are two main methods in pattern recognition. The disadvantage of statistical pattern recognition is that it is difficult to represent the relationship. In the structural pattern recognition, the object is generally expressed as a graph, and the key point is the similarity or matching of the graphs. However, graph matching is complex and NP-hard. Recently, graph kernel is proposed to solve the graph matching problem, so we can map the graphs into vector space. As a result, the operations in the vector space are applicable to graph data. In this paper, we propose a new algorithm to detect anomaly for graph data. Firstly, we use graph kernel to define the similarity of the graphs, and then we convert graph data into vector data. After that, we use the Kernel Principal Component Analysis (KPCA) to reduce the dimension, and then train these data by one-class classifier to get the model for anomaly detection. The experiments on datasets MUTAG and ENZYMES at the end of the paper show the efficiency of proposed algorithm.
机译:如今,在生物学,医学,社交网络等许多领域都有大量的图形数据。但是,如果要在图形数据中应用传统算法,则很难检测到异常并获得有用的信息。统计模式识别和结构模式识别是模式识别中的两种主要方法。统计模式识别的缺点是很难表示这种关系。在结构模式识别中,对象通常表示为图形,而关键点是图形的相似性或匹配性。然而,图匹配是复杂且NP困难的。最近,提出了图核来解决图匹配问题,因此我们可以将图映射到向量空间中。结果,向量空间中的运算可应用于图形数据。在本文中,我们提出了一种新的算法来检测图数据的异常。首先,我们使用图核定义图的相似度,然后将图数据转换为矢量数据。之后,我们使用内核主成分分析(KPCA)来减小维度,然后通过一类分类器训练这些数据以获取用于异常检测的模型。最后,在数据集MUTAG和ENZYMES上的实验表明了该算法的有效性。

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