基于稀疏线性组合的高效时间序列分类

Zhenguo Zhang, Peng Nie, Yanlong Wen
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引用次数: 1

摘要

由于变量的排序,时间序列分类提出了一个特定的机器学习挑战。近年来的研究表明,具有弹性距离度量的简单最近邻分类器是难以击败的,许多研究者都在研究替代距离度量。与最近邻分类器试图寻找与测试实例距离最小的训练样本不同,本文采用重构策略来确定新时间序列的标签。具体来说,对于每一个测试时间序列,我们使用尽可能少的训练样本进行重构,然后计算测试时间序列与所选的每一类训练样本之间的残差。将测试时间序列分类为残差最小的一类。为了从训练集中得到所需的时间序列,我们在拟合测试时间序列的同时,采用稀疏约束技术发现不同训练样本的最优组合。同时,为了解决时间序列数据线性不可分割的情况,我们通过核技巧扩展了我们的方法。大量的实验结果表明,该方法在常用的时间序列数据集上可以获得显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Time Series Classification via Sparse Linear Combination
Time series classification presents a specific machine learning challenge due to the ordering of variables. Recent studies show that the simple nearest neighbor classifier with elastic distance measures is hard to beat and many researchers focus on alternative distance measures. Unlike nearest neighbor classifier try to find a training sample which has the minimum distance with test instance, we utilize a reconstruction strategy to determine the label of new time series in this paper. Concretely, for each test time series, we reconstruct it by using as few training samples as possible and then calculate the residuals between the test time series and the selected training samples of each class. The test time series is classified to the class with minimum residual. To get the required time series from the training set, we employ sparse restriction technique to discover the optimal combination of different training samples while fitting test time series. Meanwhile, to solve the scenarios where the time series dataset is linearly inseparable, we extend our method by the kernel trick. Extensive experimental results show that the proposed method can gain the significant improvement on commonly used time series datasets.
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