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Spatio-temporal outlier detection algorithms based on computing behavioral outlierness factor

机译:基于计算行为异常因素因子的时空异常检测算法

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A major task in spatio-temporal outlier detection is to identify objects that exhibit abnormal behavior either spatially, and/or temporally. There have only been a few algorithms proposed for detecting spatial and/or temporal outliers. One example is the Local Density-Based Spatial Clustering of Applications with Noise (LDBSCAN). Density-Based Spatial Clustering of Applications with Noise (DBSCAN) is mainly for clustering; it just tells us whether an object belongs to a cluster or it is an outlier. A measure known as Local Outlier Factor (LOF) gives a quantitative measure of outlierness to each object, where a high LOF score means it is potentially an outlier. LDBSCAN algorithm, which combines the above notions, considers only the spatial context. Furthermore, the notion of a cluster is defeated (i.e. LDBSCAN may report clusters having less than the minimum required points in a cluster), and some of the outliers may not be detected because of the limitation of the existing conditions in the LDBSCAN algorithm. In this paper, we propose two algorithms, namely Spatio-Temporal Behavioral Density-based Clustering of Applications with Noise (ST-BDBCAN) and Approx-ST-BDBCAN. ST-BDBCAN algorithm adopts the proposed, new concept, called Spatio-Temporal Behavioral Outlier Factor (ST-BOF), which is a spatio-temporal extension to LOF. It also uses both spatial and temporal attributes simultaneously to define the context. By doing so, the relative importance of spatial continuity or temporal continuity appropriate to the application at hand can be established. The Approx-ST-BDBCAN algorithm achieves improved scalability, with minimal loss of detection accuracy by partitioning data points for parallel processing. Experimental results on synthetic, and buoy datasets suggest that our proposed algorithms are accurate and computationally efficient. Additionally, new Outlier Association with Hurricane Intensity Index (OAHU) measures are introduced for quantitative evaluation of the results from buoy dataset.
机译:时空异常远离检测中的主要任务是识别在空间和/或时间上表现出异常行为的对象。仅提出了一些用于检测空间和/或时间异常值的少数算法。一个示例是具有噪声(LDBSCAN)的本地密度的空间聚类。基于密度的空间聚类具有噪声(DBSCAN)的应用主要用于聚类;它只是告诉我们一个对象是否属于群集,或者是一个异常值。称为本地异常因素因子(LOF)的措施为每个对象提供了对差异的定量测量,其中高LOF得分意味着它可能是一个异常值。 LDBSCAN算法组合上述概念,仅考虑空间上下文。此外,群集的概念被击败(即,LDBSCAN可能报告群集中的群集,并且由于LDBSCAN算法中的现有条件限制,可能无法检测到一些异常值。在本文中,我们提出了两种算法,即具有噪声(ST-BDBCAN)和大约ST-BDBCAN的应用的两种算法基于时空行为密度的聚类。 ST-BDBCAN算法采用拟议的新概念,称为时空行为异常转型(ST-BOF),这是LOF的时空扩展。它还使用两种空间和时间属性来定义上下文。通过这样做,可以建立适合于手头应用的空间连续性或时间连续性的相对重要性。大约ST-BDBCAN算法实现了改进的可伸缩性,通过对数据点进行并行处理来划分数据点来实现最小的检测精度。合成和浮标数据集的实验结果表明,我们所提出的算法是准确和计算的高效。此外,介绍了与飓风强度指数(OAHU)措施的新异常协会,用于对浮标数据集的结果进行定量评估。

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