A Weighted DTW Approach for Similarity Matching over Uncertain Time Series
Abstract
To measure uncertain time series similarity effectively and efficiently, in this paper, we propose a weighted DTW distance-based approach for uncertain time series with the expected distance. We introduce a weight function to assign weights to a reference point and a testing point. With this function and the WDTW, the accuracy of calculating uncertain time series similarity can be improved. Also, to reduce the storage space and time-consuming, we extend the lower bound function LB_Keogh for DTW into ULB_Keogh for our approach.
Keywords
uncertain time series, similarity matching, dynamic time warping (DTW), weighted DTW
Full Text:
PDFThis work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License.