VAR Model Based Clustering Method for Multivariate Time Series Data
- 作者: Deb S.1
-
隶属关系:
- Department of Statistics, University of Chicago
- 期: 卷 237, 编号 6 (2019)
- 页面: 754-765
- 栏目: Article
- URL: https://ogarev-online.ru/1072-3374/article/view/242448
- DOI: https://doi.org/10.1007/s10958-019-04201-4
- ID: 242448
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详细
In this study, we develop a clustering method for multivariate time series data. In practical situations, such problems can arise in finance, economics, control theory, and health science. First, we propose to use a simulation based approximation to the test statistic and develop a method to test if two multivariate time series are coming from same VAR process. Then, the testing method is extended to a group of multivariate time series objects. Finally, a new clustering algorithm is developed using the testing method. The proposed algorithm does not use a predetermined number of clusters and finds the best possible clustering from the data. Empirical studies are provided in this paper, and they establish the accuracy of the algorithm. Finally, as a practical example, the algorithm is implemented to identify activities of different persons from a real-life data obtained from single chest-mounted accelerometers worn by different individuals.
作者简介
S. Deb
Department of Statistics, University of Chicago
编辑信件的主要联系方式.
Email: sdeb@uchicago.edu
美国, Chicago, IL
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