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Randomized trees for time series representation...
Journal article

Randomized trees for time series representation and similarity

Abstract

Most of the temporal data mining tasks require representations to capture important characteristics of time series. Representation learning is challenging when time series differ in distributional characteristics and/or show irregularities such as varying lengths and missing observations. Moreover, when time series are multivariate, interactions between variables should be modeled efficiently. This study proposes a unified, flexible time series representation learning framework for both univariate and multivariate time series called Rand-TS. Rand-TS models density characteristics of each time series as a time-varying Gaussian distribution using random decision trees and embeds density information into a sparse vector. Rand-TS can work with time series of various lengths and missing observations, furthermore, it allows using customized features. We illustrate the classification performance of Rand-TS on 113 univariate, 19 multivariate along with 15 univariate time series with varying lengths from UCR database. The results show that in addition to its flexibility, Rand-TS provides competitive classification performance.

Authors

Görgülü B; Baydoğan MG

Journal

Pattern Recognition, Vol. 120, ,

Publisher

Elsevier

Publication Date

December 1, 2021

DOI

10.1016/j.patcog.2021.108097

ISSN

0031-3203

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