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VALMOD: A Suite for Easy and Exact Detection of Variable Length Motifs in Data Series

Published: 27 May 2018 Publication History

Abstract

Data series motif discovery represents one of the most useful primitives for data series mining, with applications to many domains, such as robotics, entomology, seismology, medicine, and climatology, and others. The state-of-the-art motif discovery tools still require the user to provide the motif length. Yet, in several cases, the choice of motif length is critical for their detection. Unfortunately, the obvious brute-force solution, which tests all lengths within a given range, is computationally untenable, and does not provide any support for ranking motifs at different resolutions (i.e., lengths). We demonstrate VALMOD, our scalable motif discovery algorithm that efficiently finds all motifs in a given range of lengths, and outputs a length-invariant ranking of motifs. Furthermore, we support the analysis process by means of a newly proposed meta-data structure that helps the user to select the most promising pattern length. This demo aims at illustrating in detail the steps of the proposed approach, showcasing how our algorithm and corresponding graphical insights enable users to efficiently identify the correct motifs.

References

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Chin-Chia Michael Yeh et al. Matrix Profile I: All Pairs Similarity Joins for Time Series: A Unifying View That Includes Motifs, Discords and Shapelets. In IEEE, ICDM 2016.
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Yan Zhu et al. Matrix Profile II: Exploiting a Novel Algorithm and GPUs to Break the One Hundred Million Barrier for Time Series Motifs and Joins. In IEEE, ICDM 2016.
[3]
Yuhong Li, Leong Hou U, Man Lung Yiu, and Zhiguo Gong. 2015. Quick-motif: An efficient and scalable framework for exact motif discovery ICDE. (2015).
[4]
Michele Linardi, Yan Zhu, Themis Palpanas, and Eamonn J. Keogh. 2018. Matrix Profile X: VALMOD - Scalable Discovery of Variable-Length Motifs in Data Series. SIGMOD.
[5]
Abdullah Mueen. Enumeration of Time Series Motifs of All Lengths. In ICDM, 2013.
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CW Whitney, DJ Gottlieb, S Redline, RG Norman, RR Dodge, E Shahar, S Surovec, and FJ Nieto. 1998. Reliability of scoring respiratory disturbance indices and sleep staging. Sleep (November 1998).
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Dragomir Yankov, Eamonn J. Keogh, Jose Medina, Bill Yuan-chi Chiu, and Victor B. Zordan. Detecting time series motifs under uniform scaling. In KDD 2007

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  • (2024)Discovering Leitmotifs in Multidimensional Time SeriesProceedings of the VLDB Endowment10.14778/3705829.370585218:2(377-389)Online publication date: 1-Oct-2024
  • (2024)Scalable Financial Time Series Pattern Recognition with Ratio Based Data Representation2024 9th International Conference on Electronic Technology and Information Science (ICETIS)10.1109/ICETIS61828.2024.10593987(627-630)Online publication date: 17-May-2024
  • (2024)Multidimensional time series motif group discovery based on matrix profileKnowledge-Based Systems10.1016/j.knosys.2024.112509304(112509)Online publication date: Nov-2024
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  1. VALMOD: A Suite for Easy and Exact Detection of Variable Length Motifs in Data Series

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    cover image ACM Conferences
    SIGMOD '18: Proceedings of the 2018 International Conference on Management of Data
    May 2018
    1874 pages
    ISBN:9781450347037
    DOI:10.1145/3183713
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    Publication History

    Published: 27 May 2018

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    Author Tags

    1. data mining
    2. data series
    3. motif discovery
    4. time series
    5. variable length

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    SIGMOD '18 Paper Acceptance Rate 90 of 461 submissions, 20%;
    Overall Acceptance Rate 785 of 4,003 submissions, 20%

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    Cited By

    View all
    • (2024)Discovering Leitmotifs in Multidimensional Time SeriesProceedings of the VLDB Endowment10.14778/3705829.370585218:2(377-389)Online publication date: 1-Oct-2024
    • (2024)Scalable Financial Time Series Pattern Recognition with Ratio Based Data Representation2024 9th International Conference on Electronic Technology and Information Science (ICETIS)10.1109/ICETIS61828.2024.10593987(627-630)Online publication date: 17-May-2024
    • (2024)Multidimensional time series motif group discovery based on matrix profileKnowledge-Based Systems10.1016/j.knosys.2024.112509304(112509)Online publication date: Nov-2024
    • (2023)Variable-Size Segmentation for Time Series RepresentationTransactions on Large-Scale Data- and Knowledge-Centered Systems LIII10.1007/978-3-662-66863-4_2(34-65)Online publication date: 9-Feb-2023
    • (2022)Variable-Length Subsequence Clustering in Time SeriesIEEE Transactions on Knowledge and Data Engineering10.1109/TKDE.2020.298696534:2(983-995)Online publication date: 1-Feb-2022
    • (2022)IndoLabel: Predicting Indoor Location Class by Discovering Location-Specific Sensor Data MotifsIEEE Sensors Journal10.1109/JSEN.2021.310291622:6(5372-5385)Online publication date: 15-Mar-2022
    • (2021)Electricity Demand Activation ExtractionProceedings of the Twelfth ACM International Conference on Future Energy Systems10.1145/3447555.3464865(148-159)Online publication date: 22-Jun-2021
    • (2020)Explaining Any Time Series Classifier2020 IEEE Second International Conference on Cognitive Machine Intelligence (CogMI)10.1109/CogMI50398.2020.00029(167-176)Online publication date: Oct-2020
    • (2020)Matrix profile goes MAD: variable-length motif and discord discovery in data seriesData Mining and Knowledge Discovery10.1007/s10618-020-00685-w34:4(1022-1071)Online publication date: 7-May-2020
    • (2020)BestNeighbor: efficient evaluation of kNN queries on large time series databasesKnowledge and Information Systems10.1007/s10115-020-01518-463:2(349-378)Online publication date: 16-Nov-2020
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