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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Anomalous Window Discovery for Linear Intersecting Paths
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Anomalous Window Discovery for Linear Intersecting Paths

机译:线性相交路径的异常窗口发现

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摘要

The focus of this paper is to discover anomalous windows in linear intersecting paths. Anomalous windows are the contiguous groupings of data points. A linear path refers to a path represented by a line with a single dimensional spatial coordinate marking an observation point. In this paper, we propose an approach for discovering anomalous windows using a class of algorithms based on scan statistics, specifically 1) an Order invariant algorithm using Scan Statistics for Linear Intersecting Paths (SSLIP), 2) Brute force-SSLIP (BF-SSLIP), and 3) Central Brute Forceȁ4;SSLIP (CBF-SSLIP). We further present two efficient variants of SSLIP: {rm SSLIP}^ast which employs a upper bound on the scan window size, and SSLIP-Acc, which adopts an accelerator function to speed up the scan process. The proposed approach for discovering anomalous windows along linear paths comprises the following distinct steps: 1) Cross Path Discovery: where we identify a subset of intersecting paths to be considered, 2) Anomalous Window Discovery: where we outline the various algorithms for the traversal of the cross paths to identify varying size directional windows along the paths. For identifying an anomalous window, an unusualness metric is computed, in the form of a likelihood ratio to indicate the degree of unusualness of this window with respect to the rest of the data. We identify the window with the highest likelihood ratio as our anomalous window, and 3) Monte Carlo Simulations: to ascertain whether this window is truly anomalous and not merely random occurrence, we perform hypothesis testing by computing a p-value using Monte Carlo Simulations. We present extensive experimental results in real world accident data sets for various highways with known issues (code and data available from [32], [27]). Additionally, we also perform comparisons with current approaches [18], [34] to show the efficacy of our approach. Our results show that our approach indeed is effective in identifyin-n-ng anomalous traffic accident windows along multiple intersecting highways.
机译:本文的重点是发现线性相交路径中的异常窗口。异常窗口是数据点的连续分组。线性路径是指由具有表示观察点的一维空间坐标的线表示的路径。在本文中,我们提出了一种使用基于扫描统计量的算法发现异常窗口的方法,特别是1)使用线性相交路径的扫描统计量(SSLIP)的阶不变算法,2)蛮力SSLIP(BF-SSLIP) )和3)中央蛮力4; SSLIP(CBF-SSLIP)。我们进一步介绍了SSLIP的两个有效变体:{rm SSLIP} ^ ast(在扫描窗口大小上采用上限)和SSLIP-Acc(其采用加速器功能来加快扫描过程)。沿线性路径发现异常窗口的建议方法包括以下不同的步骤:1)交叉路径发现:我们在其中确定要考虑的相交路径的子集; 2)异常窗口发现:在此概述了遍历路径的各种算法交叉路径以识别沿路径变化的大小方向窗口。为了识别异常窗口,以似然比的形式计算异常度量,以指示该窗口相对于其余数据的异常程度。我们将具有最高似然比的窗口识别为我们的异常窗口,以及3)蒙特卡洛模拟:为确定此窗口是否真正异常并且不仅仅是随机出现,我们通过使用蒙特卡洛模拟计算p值来执行假设检验。我们在具有已知问题的各种高速公路的现实世界事故数据集中提供了广泛的实验结果(代码和数据可从[32],[27]获得)。此外,我们还与现有方法进行了比较[18],[34],以表明我们方法的有效性。我们的结果表明,我们的方法确实可以有效地识别沿多个相交高速公路的异常交通事故窗口。

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