TrailMarker: Automatic Mining of Geographical Complex Sequences

Takato Honda
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引用次数: 2

Abstract

Given a huge collection of vehicle sensor data consisting of d sensors for w trajectories of duration n, which are accompanied by geographical information, how can we find patterns, rules and outliers? How can we efficiently and effectively find typical patterns and points of variation? In this paper we present TRAILMARKER, a fully automatic mining algorithm for geographical complex sequences. Our method has the following properties: (a) effective: it finds important patterns and outliers in real datasets; (b) scalable: it is linear with respect to the data size; (c) parameter-free: it is fully automatic, and requires no prior training, and no parameter tuning. Extensive experiments on real data demonstrate that TRAILMARKER finds interesting and unexpected patterns and groups accurately. In fact, TRAILMARKER consistently outperforms the best state-of-the-art methods in terms of both accuracy and execution speed.
TrailMarker:地理复杂序列的自动挖掘
给定由d个传感器组成的w条持续时间为n的轨迹的庞大车辆传感器数据集,这些数据伴随着地理信息,我们如何找到模式,规则和异常值?我们如何才能有效地找到典型的模式和变异点?本文提出了一种地理复杂序列的全自动挖掘算法TRAILMARKER。我们的方法具有以下特点:(a)有效:在真实数据集中发现重要的模式和异常值;(b)可扩展:它与数据大小是线性的;(c)无参数:是全自动的,不需要事先训练,也不需要参数调整。对真实数据的大量实验表明,TRAILMARKER可以准确地发现有趣的和意想不到的模式和组。事实上,TRAILMARKER在准确性和执行速度方面始终优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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