子轨迹聚类:模型和算法

P. Agarwal, K. Fox, Kamesh Munagala, Abhinandan Nath, Jiangwei Pan, Erin Taylor
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引用次数: 35

摘要

我们提出了一种子轨迹聚类模型——轨迹子序列聚类;每个子轨迹簇被表示为一个路径,一个不一定是输入轨迹子序列的点序列。给定一组轨迹,我们的聚类模型试图通过假设每个轨迹是一小组路径的连接来捕获它们之间的共享部分,其中可能存在间隙。我们提出了一个单一的目标函数,用于寻找最优的路径集合,该集合最能代表考虑到噪声和数据的其他伪影的轨迹。我们证明了子轨迹聚类问题是NP-Hard问题,并给出了子轨迹聚类的快速逼近算法。如果输入轨迹“表现良好”,我们将进一步改善算法的运行时间。最后,我们给出了在真实数据集和合成数据集上的实验结果。我们通过可视化和定量分析表明,该算法确实处理了对变化的鲁棒性,效率和准确性以及数据驱动的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subtrajectory Clustering: Models and Algorithms
We propose a model for subtrajectory clustering ---the clustering of subsequences of trajectories; each cluster of subtrajectories is represented as a pathlet, a sequence of points that is not necessarily a subsequence of an input trajectory. Given a set of trajectories, our clustering model attempts to capture the shared portions between them by assuming each trajectory is a concatenation of a small set of pathlets, with possible gaps in between. We present a single objective function for finding the optimal collection of pathlets that best represents the trajectories taking into account noise and other artifacts of the data. We show that the subtrajectory clustering problem is NP-Hard and present fast approximation algorithms for subtrajectory clustering. We further improve the running time of our algorithm if the input trajectories are "well-behaved." Finally, we present experimental results on both real and synthetic data sets. We show via visualization and quantitative analysis that the algorithm indeed handles the desiderata of being robust to variations, being efficient and accurate, and being data-driven.
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