Authors
Izaskun Oregi, Aritz Pérez, Javier Del Ser, José A Lozano
Publication date
2017
Conference
Machine Learning and Knowledge Discovery in Databases: European Conference, ECML PKDD 2017, Skopje, Macedonia, September 18–22, 2017, Proceedings, Part II 10
Pages
591-605
Publisher
Springer International Publishing
Description
Dynamic Time Warping is a well-known measure of dissimilarity between time series. Due to its flexibility to deal with non-linear distortions along the time axis, this measure has been widely utilized in machine learning models for this particular kind of data. Nowadays, the proliferation of streaming data sources has ignited the interest and attention of the scientific community around on-line learning models. In this work, we naturally adapt Dynamic Time Warping to the on-line learning setting. Specifically, we propose a novel on-line measure of dissimilarity for streaming time series which combines a warp constraint and a weighted memory mechanism to simplify the time series alignment and adapt to non-stationary data intervals along time. Computer simulations are analyzed and discussed so as to shed light on the performance and complexity of the proposed measure.
Total citations
20182019202020212022202320242757722
Scholar articles
I Oregi, A Pérez, J Del Ser, JA Lozano - Machine Learning and Knowledge Discovery in …, 2017