Title :
Identifying critical variables of principal components for unsupervised feature selection
Author_Institution :
Sch. of Electr. & Electron. Eng., Nanyang Technol. Univ., Singapore
fDate :
4/1/2005 12:00:00 AM
Abstract :
Principal components analysis (PCA) is probably the best-known approach to unsupervised dimensionality reduction. However, axes of the lower-dimensional space, i.e., principal components (PCs), are a set of new variables carrying no clear physical meanings. Thus, interpretation of results obtained in the lower-dimensional PCA space and data acquisition for test samples still involve all of the original measurements. To deal with this problem, we develop two algorithms to link the physically meaningless PCs back to a subset of original measurements. The main idea of the algorithms is to evaluate and select feature subsets based on their capacities to reproduce sample projections on principal axes. The strength of the new algorithms is that the computation complexity involved is significantly reduced, compared with the data structural similarity-based feature evaluation.
Keywords :
backward chaining; computational complexity; data acquisition; feature extraction; principal component analysis; unsupervised learning; backward elimination; computational complexity; data acquisition; principal components analysis; unsupervised feature selection; Data acquisition; Data analysis; Data structures; Digital signal processing; Extraterrestrial measurements; Feature extraction; Personal communication networks; Principal component analysis; Supervised learning; Testing; Backward elimination; forward selection; principal components analysis (PCA); unsupervised feature selection; Algorithms; Artificial Intelligence; Cluster Analysis; Computer Simulation; Models, Statistical; Pattern Recognition, Automated; Principal Component Analysis;
Journal_Title :
Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
DOI :
10.1109/TSMCB.2004.843269