A Novel Time Series Representation Approach for Dimensionality Reduction

Pub Date : 2022-01-01 DOI:10.36244/icj.2022.2.5
Mohammad Bawaneh, V. Simon
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Abstract

With the growth of streaming data from many domains such as transportation, finance, weather, etc, there has been a surge in interest in time series data mining. With this growth and massive amounts of time series data, time series representation has become essential for reducing dimensionality to overcome the available memory constraints. Moreover, time series data mining processes include similarity search and learning of historical data tasks. These tasks require high computation time, which can be reduced by reducing the data dimensionality. This paper proposes a novel time series representation called Adaptive Simulated Annealing Representation (ASAR). ASAR considers the time series representation as an optimization problem with the objective of preserving the time series shape and reducing the dimensionality. ASAR looks for the instances in the raw time series that can represent the local trends and neglect the rest. The Simulated Annealing optimization algorithm is adapted in this paper to fulfill the objective mentioned above. We compare ASAR to three well-known representation approaches from the literature. The experimental results have shown that ASAR achieved the highest reduction in the dimensions. Moreover, it has been shown that using the ASAR representation, the data mining process is accelerated the most. The ASAR has also been tested in terms of preserving the shape and the information of the time series by performing One Nearest Neighbor (1-NN) classification and K-means clustering, which assures its ability to preserve them by outperforming the competing approaches in the K-means task and achieving close accuracy in the 1-NN classification task.
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一种新的降维时间序列表示方法
随着交通、金融、天气等领域流数据的增长,人们对时间序列数据挖掘的兴趣激增。随着这种增长和大量的时间序列数据,时间序列表示对于降低维数以克服可用内存限制变得至关重要。此外,时间序列数据挖掘过程还包括相似性搜索和历史数据学习任务。这些任务需要大量的计算时间,可以通过降低数据维数来减少计算时间。本文提出了一种新的时间序列表示方法——自适应模拟退火表示(ASAR)。ASAR将时间序列表示视为一个优化问题,其目标是保持时间序列形状并降低维数。ASAR在原始时间序列中寻找能够代表局部趋势的实例,而忽略其他实例。本文采用模拟退火优化算法来实现上述目标。我们将ASAR与文献中三种知名的表示方法进行比较。实验结果表明,ASAR的降噪效果最好。此外,研究表明,使用ASAR表示可以最大程度地加快数据挖掘过程。通过执行一个最近邻(1-NN)分类和K-means聚类,ASAR还在保存时间序列的形状和信息方面进行了测试,这确保了它通过在K-means任务中优于竞争方法并在1-NN分类任务中实现接近精度来保存它们的能力。
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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