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Amplitude-Based Time Series Data Clustering Method

Author

Listed:
  • Yukari Shirota
  • Basabi Chakraborty

Abstract

In the paper, we propose an amplitude-based time series data clustering method. When we analyze the trend index movement in economy, shape-based clustering does not work well because the standardization/z-normalization is required in advance on the input data and the standardization removes the amplitude/variance information from the original data. Then, the flat fluctuation may often become a large-variance fluctuation by the standardization, which is a problem. To solve the problem, we proposed a method by Amplitude-based time series data clustering method which uses Euclidean distance of Euclidean distances as the distance measurement. In the paper, we investigate the performance of the method, using the real stock prices data. The data are the indexed growth rate patterns of stock prices. Our proposed method could divide the companies’ stocks as we humans did, and the result met our requirements. The proposed amplitude-based time series data clustering method is helpful onomic indexed growth data clustering.

Suggested Citation

  • Yukari Shirota & Basabi Chakraborty, 2022. "Amplitude-Based Time Series Data Clustering Method," Gakushuin Economic Papers, Gakushuin University, Faculty of Economics, vol. 59(2), pages 127-140.
  • Handle: RePEc:abc:gakuep:59-2-1
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    File URL: https://www.gakushuin.ac.jp/univ/eco/gakkai/pdf_files/keizai_ronsyuu/contents/contents2022//5902/5902shirota1/5902shirota1.pdf
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    References listed on IDEAS

    as
    1. Hautsch, Nikolaus & Voigt, Stefan, 2019. "Large-scale portfolio allocation under transaction costs and model uncertainty," Journal of Econometrics, Elsevier, vol. 212(1), pages 221-240.
    2. Johann Pfitzinger & Nico Katzke, 2019. "A constrained hierarchical risk parity algorithm with cluster-based capital allocation," Working Papers 14/2019, Stellenbosch University, Department of Economics.
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