The use of temporally aggregated data on detecting a mean change of a time series process

被引:6
|
作者
Lee, Bu Hyoung [1 ]
Wei, William W. S. [1 ]
机构
[1] Temple Univ, Dept Stat, 1801 Liacouras Walk, Philadelphia, PA 19122 USA
关键词
Likelihood ratio test; mean change; temporal aggregation; LEVEL SHIFTS; OUTLIERS; TESTS; PARAMETERS;
D O I
10.1080/03610926.2015.1091082
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
In this article we investigate the effects of temporal aggregation on testing for a mean change of time series through a likelihood ratio (LR) test. We derive the functional relationship between non aggregate-model parameters and aggregate-model parameters. Using the relationship, we propose a modified LR test when aggregate data are used. Through the theory, Monte Carlo simulations, and empirical examples, we show that aggregation leads the null distribution of the LR test statistic being shifted to the left. Hence, the test power increases as the order of aggregation increases.
引用
收藏
页码:5851 / 5871
页数:21
相关论文
共 50 条
  • [41] Extracting technology and detecting outliers from process time series data reflecting expert operator skills
    Kurahashi, Setsuya
    Inagaki, Fumitatsu
    2006 SICE-ICASE INTERNATIONAL JOINT CONFERENCE, VOLS 1-13, 2006, : 3864 - +
  • [42] Quantifying input data drift in medical machine learning models by detecting change-points in time-series data
    Prathapan, Smriti
    Samala, Ravi K.
    Hadjiyski, Nathan
    D'Haese, Pierre-Francois
    Maldonado, Fabien
    Phuong Nguyen
    Yesha, Yelena
    Sahiner, Berkman
    COMPUTER-AIDED DIAGNOSIS, MEDICAL IMAGING 2024, 2024, 12927
  • [43] FORECASTING SALES RESPONSE FOR MULTIPLE TIME HORIZONS AND TEMPORALLY AGGREGATED DATA - A COMPARISON OF CONSTANT AND STOCHASTIC COEFFICIENT MODELS
    YOKUM, JT
    WILDT, AR
    INTERNATIONAL JOURNAL OF FORECASTING, 1987, 3 (3-4) : 479 - 488
  • [44] Detecting Variable Length Anomaly Patterns in Time Series Data
    Ngo Duy Khanh Vy
    Duong Tuan Anh
    DATA MINING AND BIG DATA, DMBD 2016, 2016, 9714 : 279 - 287
  • [45] Detecting structural changes in the time series in the use of simulation methods
    Milek, Michal
    9TH PROFESSOR ALEKSANDER ZELIAS INTERNATIONAL CONFERENCE ON MODELLING AND FORECASTING OF SOCIO-ECONOMIC PHENOMENA, 2015, : 145 - 153
  • [46] Detecting Anomalies in Marine Data: A Framework for Time Series Analysis
    Del Buono, Nicoletta
    Esposito, Flavia
    Gargano, Grazia
    Selicato, Laura
    Taggio, Nicolo
    Ceriola, Giulio
    Iasillo, Daniela
    MACHINE LEARNING, OPTIMIZATION, AND DATA SCIENCE, LOD 2022, PT I, 2023, 13810 : 485 - 500
  • [47] Detecting soil salinity with MODIS time series VI data
    Zhang, Ting-Ting
    Qi, Jia-Guo
    Gao, Yu
    Ouyang, Zu-Tao
    Zeng, Sheng-Lan
    Zhao, Bin
    ECOLOGICAL INDICATORS, 2015, 52 : 480 - 489
  • [48] Detecting Unusual Temporal Patterns in Fisheries Time Series Data
    Wagner, Tyler
    Midway, Stephen R.
    Vidal, Tiffany
    Irwin, Brian J.
    Jackson, James R.
    TRANSACTIONS OF THE AMERICAN FISHERIES SOCIETY, 2016, 145 (04) : 786 - 794
  • [49] Privately detecting bursts in streaming, distributed time series data
    Singh, Lisa
    Sayal, Mehmet
    DATA & KNOWLEDGE ENGINEERING, 2009, 68 (06) : 509 - 530
  • [50] Detecting frequency modulation in stochastic time-series data
    Hauber, Adrian L.
    Sigloch, Christian
    Timmer, Jens
    PHYSICAL REVIEW E, 2022, 106 (02)