Title :
Feature Selection for Change Detection in Multivariate Time-Series
Author :
Botsch, Michael ; Nossek, Josef A.
Author_Institution :
Inst. for Circuit Theor. & Signal Process., Tech. Univ. Munich
fDate :
March 1 2007-April 5 2007
Abstract :
In machine learning the preprocessing of the observations and the resulting features are one of the most important factors for the performance of the final system. In this paper a method to perform feature selection for change detection in multivariate time-series is presented. Feature selection aims to determine a small subset which is representative for the change detection task from a given set of features. We are dealing with time-series where the classification has to be done on time-stamp level, although the smallest independent entity is a scenario consisting of one or more time-series. Despite this difficulty we will show how feature selection based on the generalization ability of a classifier can be realized by defining a cost function on scenario level. For the classification step in the feature selection process a modified random forest (RF) algorithm - which we will call scenario based random forest (SBRF) - is used due to its intrinsic possibility to estimate the generalization error. The excellent performance of the proposed feature selection algorithm will be shown in a car crash detection application
Keywords :
learning (artificial intelligence); pattern classification; time series; change detection; feature selection; generalization; machine learning; multivariate time-series; random forest algorithm; scenario based random forest; Circuit theory; Computational intelligence; Data mining; Feature extraction; Machine learning; Radio frequency; Sequences; Signal processing; Signal processing algorithms; Stochastic processes;
Conference_Titel :
Computational Intelligence and Data Mining, 2007. CIDM 2007. IEEE Symposium on
Conference_Location :
Honolulu, HI
Print_ISBN :
1-4244-0705-2
DOI :
10.1109/CIDM.2007.368929