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Cardoso, M. G. M. S. & Martins, A. A. (2022). The performance of a combined distance between time series. In Bispo, R., Henriques-Rodrigues, L., Alpizar-Jara, R., and Carvalho, M. de. (Ed.), Recent Developments in Statistics and Data Science. SPE 2021. Springer Proceedings in Mathematics & Statistics. (pp. 71-83). Virtual, Online: Springer.
M. M. Cardoso and A. A. Martins, "The performance of a combined distance between time series", in Recent Developments in Statistics and Data Science. SPE 2021. Springer Proc. in Mathematics & Statistics, Bispo, R., Henriques-Rodrigues, L., Alpizar-Jara, R., and Carvalho, M. de., Ed., Virtual, Online, Springer, 2022, vol. 398, pp. 71-83
@inproceedings{cardoso2022_1732200729971, author = "Cardoso, M. G. M. S. and Martins, A. A.", title = "The performance of a combined distance between time series", booktitle = "Recent Developments in Statistics and Data Science. SPE 2021. Springer Proceedings in Mathematics & Statistics", year = "2022", editor = "Bispo, R., Henriques-Rodrigues, L., Alpizar-Jara, R., and Carvalho, M. de.", volume = "398", number = "", series = "", doi = "10.1007/978-3-031-12766-3_6", pages = "71-83", publisher = "Springer", address = "Virtual, Online", organization = "", url = "https://link.springer.com/book/10.1007/978-3-031-12766-3" }
TY - CPAPER TI - The performance of a combined distance between time series T2 - Recent Developments in Statistics and Data Science. SPE 2021. Springer Proceedings in Mathematics & Statistics VL - 398 AU - Cardoso, M. G. M. S. AU - Martins, A. A. PY - 2022 SP - 71-83 SN - 2194-1009 DO - 10.1007/978-3-031-12766-3_6 CY - Virtual, Online UR - https://link.springer.com/book/10.1007/978-3-031-12766-3 AB - This paper presents the comparison of a proposed measure of dissimilarity between time series (COMB) with three baseline measures. COMB is a convex combination of Euclidean distance, a Pearson correlation based distance, a Periodogram based measure and a distance between estimated autocorrelation structures. The comparison resorts to 1-Nearest Neighbour classifier (1NN) since the effectiveness of the dissimilarity measures is directly reflected on the performance of 1NN. Data considered is available in the University of California Riverside (UCR) Time-Series Archive which includes data sets from a wide variety of application domains and have been used in similar studies. The COMB measure shows promising results: a good trade-off performance-computation time when compared to the alternative distances considered. ER -