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Anomaly Detection Algorithm Based on CFSFDP

机译:基于CFSFDP的异常检测算法

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摘要

Clustering by fast search and find of density peak(CFSFDP) is a simple and crisp density-clustering algorithm. The original algorithm is not suitable for direct application to anomaly detection. Its clustering results have a high level of redundant density information. If used directly as behavior profiles, the computation and storage costs of anomaly detection are high. Therefore, an improved algorithm based on CFSFDP is proposed for anomaly detection. The improved algorithm uses a few data points and their radius to support behavior profiles, and deletes the redundant data points without supporting profiles. This method not only reduces the large amount of data storage and distance calculation in the process of generating profiles, but also reduces the search space of profiles in the detection process. Numerous experiments show that the improved algorithm generates profiles faster than density-based spatial clustering of application with noise (DBSCAN), and has better profile precision than adaptive real-time anomaly detection with incremental clustering (ADWICE). The improved algorithm inherits the arbitrary shape clusters of CFSFDP, and improves the storage and computation performance. Compared with DBSCAN and ADWICE, the improved anomaly-detection algorithm based on CFSFDP has more balanced detection precision and real-time performance.
机译:快速搜索和密度峰值(CFSFDP)的聚类是一种简单而清晰的密度聚类算法。原始算法不适用于直接应用于异常检测。其聚类结果具有高水平的冗余密度信息。如果直接用于行为简档,则异常检测的计算和储存成本高。因此,提出了一种基于CFSFDP的改进算法,用于异常检测。改进的算法使用一些数据点及其半径来支持行为配置文件,并删除冗余数据点而不支持配置文件。此方法不仅降低了生成配置文件过程中的大量数据存储和距离计算,而且还减少了检测过程中的配置文件的搜索空间。许多实验表明,改进的算法比基于密度的空间聚类产生了噪声(DBSCAN)的基于密度的空间聚类,并且具有比具有增量聚类(ADWICE)的自适应实时异常检测更好的简档精度。改进的算法继承了CFSFDP的任意形状集群,并提高了存储和计算性能。与DBSCAN和ADWICE相比,基于CFSFDP的改进的异常检测算法具有更高的检测精度和实时性能。

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