A Feature Selection Method for Multi-dimension Time-Series Data

Author(s):  
Bahavathy Kathirgamanathan ◽  
Pádraig Cunningham
2019 ◽  
Vol 90 (2A) ◽  
pp. 563-572 ◽  
Author(s):  
Zheng Zhou ◽  
Youzuo Lin ◽  
Zhongping Zhang ◽  
Yue Wu ◽  
Paul Johnson

2017 ◽  
Vol 84 (3) ◽  
Author(s):  
Tizian Schneider ◽  
Nikolai Helwig ◽  
Andreas Schütze

AbstractThe classification of cyclically recorded time series plays an important role in measurement technologies. Example use cases range from gas sensors combined with temperature cycled operation to condition monitoring using vibration analysis. Before machine learning can be applied to high dimensional cyclical time series data dimensionality reduction has to be performed to avoid the classifier suffering from overfitting and the “curse of dimensionality”. This paper introduces a set of four complementary feature extraction methods and three feature selection algorithms that can be applied in a fully automatized manner to reduce the number of dimensions. The feature extraction algorithms are capable of extracting characteristic features from cyclical time series catching information contained in local details and overall cycle shape as well as in frequency or time-frequency domain. The methods for feature selection are capable of selecting the most suitable features for linear and nonlinear classification. The methods were chosen to be applicable to a wide range of applications which is verified by testing the set of methods on four different use cases.


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