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Dynamic Cox-Regression for Motif Prediction in Co-Evolving Time Series Data

We investigate issues related to predicting motifs (i.e., frequently occurring patterns) in co-evolving time series. Unlike periodical series where motifs are contiguously aligned, in several applications, co-evolving series tend to exhibit motifs that are non-contiguously aligned. Capturing the mec...

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Bibliographic Details
Main Authors: Tajeuna, Etienne Gael, Bouguessa, Mohamed
Format: Conference Proceeding
Language:English
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Summary:We investigate issues related to predicting motifs (i.e., frequently occurring patterns) in co-evolving time series. Unlike periodical series where motifs are contiguously aligned, in several applications, co-evolving series tend to exhibit motifs that are non-contiguously aligned. Capturing the mechanism of motif shifts in such evolving series poses significant challenges in predicting their respective subsequent appearances. This prompted us to devise a principled approach capable of handling series with non-contiguous motifs. In summary, we propose a sliding window analysis from which we devise a motif map that reflects the previous time-dependent mechanism of motif shifts occurring in a data set that comprises multiple time series. Based on the motif map, we model the motif transition mechanism via a dynamic Cox model and Support Vector Regression, which allows the prediction of series values at subsequent times. The originality of our approach lies in its modeling of time-dependent motif transition probabilities that have usually been assumed to be static in most of the existing work. Experiments on both synthetic and real data sets illustrate the suitability of our approach.
ISSN:2161-4407
DOI:10.1109/IJCNN55064.2022.9892174