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A Comparison of Unsupervised Dimension Reduction Algorithms for Classification
Fremont, California November 02-November 04
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/BIBM.2007.512007 IEEE International Conference on ...
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Distance preserving dimension reduction (DPDR) using the singular value decomposition has recently been intro- duced. In this paper, for disease diagnosis using gene or protein expression data, we present empirical comparison results between DPDR and other various dimension reduc- tion (DR) methods (i.e. PCA, MDS, Isomap, and LLE) when using support vector machines with radial basis func- tion kernel. Our results show that DPDR outperforms, as a whole, other DR methods in terms of classification ac- curacy, but at the same time, it gives significant efficiency compared with other methods since it has no parameter to be optimized. Based on these empirical results, we reach a promising conclusion that DPDR is one of the best DR methods at hand for modeling an efficient and distortion- free classifier for gene or protein expression data.
Citation:
Jaegul Choo, Hyunsoo Kim, Haesun Park, Hongyuan Zha, "A Comparison of Unsupervised Dimension Reduction Algorithms for Classification," bibm, pp.71-77, 2007 IEEE International Conference on Bioinformatics and Biomedicine (BIBM 2007), 2007
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