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A novel window strategy for concept drift detection in seasonal time series

계절성 시계열 자료의 concept drift 탐지를 위한 새로운 창 전략

  • 이도운 (아시아나 IDT, AI 빅데이터연구소) ;
  • 배수민 (아시아나 IDT, AI 빅데이터연구소) ;
  • 김강섭 (아시아나 IDT, AI 빅데이터연구소) ;
  • 안순홍 (아시아나 IDT, AI 빅데이터연구소)
  • Published : 2023.05.18

Abstract

Concept drift detection on data stream is the major issue to maintain the performance of the machine learning model. Since the online stream is to be a function of time, the classical statistic methods are hard to apply. In particular case of seasonal time series, a novel window strategy with Fourier analysis however, gives a chance to adapt the classical methods on the series. We explore the KS-test for an adaptation of the periodic time series and show that this strategy handles a complicate time series as an ordinary tabular dataset. We verify that the detection with the strategy takes the second place in time delay and shows the best performance in false alarm rate and detection accuracy comparing to that of arbitrary window sizes.

Keywords