简单、快速、准确的数据序列聚类

Luis A. Leiva, E. Vidal
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引用次数: 1

摘要

许多设备产生大量的数据,遵循某种顺序,例如,运动传感器,电子笔,或眼动仪,因此这些数据通常需要压缩分类,存储,和/或检索目的。本文介绍了一种受著名的K-means算法启发的简单、准确和极快的技术来正确地聚类序列数据。我们在一个基于网络的原型上说明了我们算法的可行性,该原型与来自鼠标和触摸输入的轨迹一起工作。可以观察到,我们的建议在精度(更好,格式良好的分割)和性能(更少的计算时间)方面优于经典的K-means算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simple, fast, and accurate clustering of data sequences
Many devices generate large amounts of data that follow some sort of sequentiality, e.g., motion sensors, e-pens, or eye trackers, and therefore these data often need to be compressed for classification, storage, and/or retrieval purposes. This paper introduces a simple, accurate, and extremely fast technique inspired by the well-known K-means algorithm to properly cluster sequential data. We illustrate the feasibility of our algorithm on a web-based prototype that works with trajectories derived from mouse and touch input. As can be observed, our proposal outperforms the classical K-means algorithm in terms of accuracy (better, well-formed segmentations) and performance (less computation time).
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