In this research, a new similarity measurement method that named Developed Longest Common Subsequence (DLCSS) is suggested for time series data mining. The main idea of the DLCSS is using the logic of the Longest Common Subsequence (LCSS) method and the concept of similarity in time series data. In most studies related to time series data mining, referred to the LCSS and Dynamic Time Warping (DTW) methods as the best and most usable for similarity measurement methods, but the LCSS is intrinsically designed to measure the similarity of two sequences of character, which later was developed for time series by defining and determining the similarity threshold. The value of similarity threshold has huge impact on the quality of time series data mining. In the DLCSS by defining two similarity thresholds and determining the values of them, this defect is eliminated. The performance of the DLCSS will be compared with the LCSS and DTW in time series data mining by the Query by content and K-medoids Clustering techniques on 23 datasets from the UCR datasets. The result shows that it is possible to claim that the performance of the DLCSS is better than the LCSS and DTW with 90% confidence.
Published in | American Journal of Data Mining and Knowledge Discovery (Volume 4, Issue 1) |
DOI | 10.11648/j.ajdmkd.20190401.16 |
Page(s) | 32-45 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2019. Published by Science Publishing Group |
Time Series, Data Mining, Similarity Measurement, Longest Common Subsequence, Dynamic Time Warping, Developed Longest Common Subsequence
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APA Style
Gholamreza Soleimany, Masoud Abessi. (2019). A New Similarity Measure for Time Series Data Mining Based on Longest Common Subsequence. American Journal of Data Mining and Knowledge Discovery, 4(1), 32-45. https://doi.org/10.11648/j.ajdmkd.20190401.16
ACS Style
Gholamreza Soleimany; Masoud Abessi. A New Similarity Measure for Time Series Data Mining Based on Longest Common Subsequence. Am. J. Data Min. Knowl. Discov. 2019, 4(1), 32-45. doi: 10.11648/j.ajdmkd.20190401.16
AMA Style
Gholamreza Soleimany, Masoud Abessi. A New Similarity Measure for Time Series Data Mining Based on Longest Common Subsequence. Am J Data Min Knowl Discov. 2019;4(1):32-45. doi: 10.11648/j.ajdmkd.20190401.16
@article{10.11648/j.ajdmkd.20190401.16, author = {Gholamreza Soleimany and Masoud Abessi}, title = {A New Similarity Measure for Time Series Data Mining Based on Longest Common Subsequence}, journal = {American Journal of Data Mining and Knowledge Discovery}, volume = {4}, number = {1}, pages = {32-45}, doi = {10.11648/j.ajdmkd.20190401.16}, url = {https://doi.org/10.11648/j.ajdmkd.20190401.16}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ajdmkd.20190401.16}, abstract = {In this research, a new similarity measurement method that named Developed Longest Common Subsequence (DLCSS) is suggested for time series data mining. The main idea of the DLCSS is using the logic of the Longest Common Subsequence (LCSS) method and the concept of similarity in time series data. In most studies related to time series data mining, referred to the LCSS and Dynamic Time Warping (DTW) methods as the best and most usable for similarity measurement methods, but the LCSS is intrinsically designed to measure the similarity of two sequences of character, which later was developed for time series by defining and determining the similarity threshold. The value of similarity threshold has huge impact on the quality of time series data mining. In the DLCSS by defining two similarity thresholds and determining the values of them, this defect is eliminated. The performance of the DLCSS will be compared with the LCSS and DTW in time series data mining by the Query by content and K-medoids Clustering techniques on 23 datasets from the UCR datasets. The result shows that it is possible to claim that the performance of the DLCSS is better than the LCSS and DTW with 90% confidence.}, year = {2019} }
TY - JOUR T1 - A New Similarity Measure for Time Series Data Mining Based on Longest Common Subsequence AU - Gholamreza Soleimany AU - Masoud Abessi Y1 - 2019/06/20 PY - 2019 N1 - https://doi.org/10.11648/j.ajdmkd.20190401.16 DO - 10.11648/j.ajdmkd.20190401.16 T2 - American Journal of Data Mining and Knowledge Discovery JF - American Journal of Data Mining and Knowledge Discovery JO - American Journal of Data Mining and Knowledge Discovery SP - 32 EP - 45 PB - Science Publishing Group SN - 2578-7837 UR - https://doi.org/10.11648/j.ajdmkd.20190401.16 AB - In this research, a new similarity measurement method that named Developed Longest Common Subsequence (DLCSS) is suggested for time series data mining. The main idea of the DLCSS is using the logic of the Longest Common Subsequence (LCSS) method and the concept of similarity in time series data. In most studies related to time series data mining, referred to the LCSS and Dynamic Time Warping (DTW) methods as the best and most usable for similarity measurement methods, but the LCSS is intrinsically designed to measure the similarity of two sequences of character, which later was developed for time series by defining and determining the similarity threshold. The value of similarity threshold has huge impact on the quality of time series data mining. In the DLCSS by defining two similarity thresholds and determining the values of them, this defect is eliminated. The performance of the DLCSS will be compared with the LCSS and DTW in time series data mining by the Query by content and K-medoids Clustering techniques on 23 datasets from the UCR datasets. The result shows that it is possible to claim that the performance of the DLCSS is better than the LCSS and DTW with 90% confidence. VL - 4 IS - 1 ER -