Range Automata for Alphabetic Time Series Dimensionality Reduction

被引:0
|
作者
Badhiye, Sagarkumar S. [1 ,2 ]
Chatur, P. N. [1 ]
机构
[1] Govt Coll Engn, Comp Sci & Engn, Amravati, India
[2] Bajaj Inst Technol, Wardha, India
关键词
time series representation; range automata; amplitude range;
D O I
暂无
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
This paper presents a symbolic time series representation technique using range automata model with dimensionality reduction in large datasets. The proposed technique uses automata model to convert the numeric time series into sequence of symbols from which useful information can be extracted. The important task is to define the number of symbols required for time seriesrepresentation; to identify the cutoff value for each symbol and construct range automata for converting the numeric time series into symbolic one dynamically. The present work addresses the above issues by considering the amplitude range of the time series. The proposed method is validated by applyingit on the time series data of ECG, which proves it to be an effective method for time series representation. The performance of RATSR is compared with SAX for elapsed time for conversion and number of samples in reduced dimension.
引用
收藏
页码:360 / 363
页数:4
相关论文
共 50 条
  • [31] Classification for Time Series Data. An Unsupervised Approach Based on Reduction of Dimensionality
    Isabel Landaluce-Calvo, M.
    Modrono-Herran, Juan, I
    JOURNAL OF CLASSIFICATION, 2020, 37 (02) : 380 - 398
  • [32] An Ensemble-based Dimensionality Reduction for Service Monitoring Time-series
    Anowar, Farzana
    Sadaoui, Samira
    Dalal, Hardik
    DELTA: PROCEEDINGS OF THE 3RD INTERNATIONAL CONFERENCE ON DEEP LEARNING THEORY AND APPLICATIONS, 2022, : 117 - 124
  • [33] Dimensionality reduction of fMRI time series data using locally linear embedding
    Peter Mannfolk
    Ronnie Wirestam
    Markus Nilsson
    Freddy Ståhlberg
    Johan Olsrud
    Magnetic Resonance Materials in Physics, Biology and Medicine, 2010, 23 : 327 - 338
  • [34] Classification for Time Series Data. An Unsupervised Approach Based on Reduction of Dimensionality
    M. Isabel Landaluce-Calvo
    Juan I. Modroño-Herrán
    Journal of Classification, 2020, 37 : 380 - 398
  • [35] Autoencoder-Enhanced Clustering: A Dimensionality Reduction Approach to Financial Time Series
    Cortes, Daniel Gonzalez
    Onieva, Enrique
    Lopez, Iker Pastor
    Trinchera, Laura
    Wu, Jian
    IEEE ACCESS, 2024, 12 : 16999 - 17009
  • [36] Exploring the Influence of Dimensionality Reduction on Anomaly Detection Performance in Multivariate Time Series
    Altin, Mahsun
    Cakir, Altan
    IEEE ACCESS, 2024, 12 : 85783 - 85794
  • [37] Dimensionality Reduction of Service Monitoring Time-Series: An Industrial Use Case
    Anowar F.
    Sadaoui S.
    Dalal H.
    SN Computer Science, 4 (1)
  • [38] Dimensionality reduction and clustering of time series for anomaly detection in a supermarket heating system
    Salmina, Lorenzo
    Castello, Roberto
    Stoll, Justine
    Scartezzini, Jean-Louis
    CARBON-NEUTRAL CITIES - ENERGY EFFICIENCY AND RENEWABLES IN THE DIGITAL ERA (CISBAT 2021), 2021, 2042
  • [39] Improvements in LTE-Advanced Time Series Prediction with Dimensionality Reduction Algorithms
    Mercader, Alexandra
    Sue, Jonathan Ah
    Hasholzner, Ralph
    Brendel, Johannes
    2018 IEEE 5G WORLD FORUM (5GWF), 2018, : 321 - 326
  • [40] Dimensionality reduction of fMRI time series data using locally linear embedding
    Mannfolk, Peter
    Wirestam, Ronnie
    Nilsson, Markus
    Stahlberg, Freddy
    Olsrud, Johan
    MAGNETIC RESONANCE MATERIALS IN PHYSICS BIOLOGY AND MEDICINE, 2010, 23 (5-6) : 327 - 338