Affiliation:
1. School of Computer and Information Technology, Beijing Jiaotong University, Beijing, China
2. Beijing Key Laboratory of Traffic Data Analysis and Mining, Beijing, China
Abstract
The key problem of time series classification is the similarity measure between time series. In recent years, efficient and accurate similarity measurement methods of time series have attracted extensive attention from researchers. According to the different similarity measure strategies, the existing time series classification methods can be roughly divided into shape-based (original value) methods and structure-based (symbol transformation) methods. Shape-based methods usually use Euclidean distance (ED), dynamic time warping (DTW), or other methods to measure the global similarity between sequences. The disadvantage of these methods is that their measurement process does not necessarily achieve local sensible matchings of time series, which leads to a decrease in their accuracy and interpretability. To better capture the local information of the sequence, the structure-based methods discretize or symbolize the local value of the time sequence, which leads to the loss of the original information of the sequence. To address these problems, this paper proposes a novel similarity measurement method named dynamic time warping based on the local morphological pattern (MPDTW), which first decomposes the local subsequences of time series using discrete wavelet transforms for extracting the local structure information. Then, the decomposed subsequence will be encoded by the morphological pattern. Finally, the ED between points and their local structure difference based on morphological pattern will be weighted and applied to the DTW algorithm to measure the similarity between sequences. Experiments have been carried out on the classification tasks of the UCR datasets and the results show that our method outperforms the existing baselines.
Subject
Artificial Intelligence,Computer Vision and Pattern Recognition,Theoretical Computer Science
Reference41 articles.
1. Time series classification by sequence learning in all-subsequence space;Nguyen;Proceedings of the IEEE 33rd International Conference on Data Engineering,2017
2. Exact mean computation in dynamic time warping spaces;Brill;Data Mining and Knowledge Discovery,2019
3. Time series representation and similarity based on local autopatterns;Baydogan;Data Mining and Knowledge Discovery,2016
4. pyts: A python package for time series classification.;Faouzi;J. Mach. Learn. Res.,2020
5. The great time series classification bake off: a review and experimental evaluation of recent algorithmic advances;Bagnall;Data Mining and Knowledge Discovery,2017