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FSKD
2005
Springer

Preventing Meaningless Stock Time Series Pattern Discovery by Changing Perceptually Important Point Detection

13 years 10 months ago
Preventing Meaningless Stock Time Series Pattern Discovery by Changing Perceptually Important Point Detection
Discovery of interesting or frequently appearing time series patterns is one of the important tasks in various time series data mining applications. However, recent research criticized that discovering subsequence patterns in time series using clustering approaches is meaningless. It is due to the presence of trivial matched subsequences in the formation of the time series subsequences using sliding window method. The objective of this paper is to propose a threshold-free approach to improve the method for segmenting long stock time series into subsequences using sliding window. The proposed approach filters the trivial matched subsequences by changing Perceptually Important Point (PIP) detection and reduced the dimension by PIP identification.
Tak-Chung Fu, Fu-Lai Chung, Robert W. P. Luk, Chak
Added 27 Jun 2010
Updated 27 Jun 2010
Type Conference
Year 2005
Where FSKD
Authors Tak-Chung Fu, Fu-Lai Chung, Robert W. P. Luk, Chak-man Ng
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