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A framework for high dimensional data reduction in the microarray domain
2010
2010 IEEE Fifth International Conference on Bio-Inspired Computing: Theories and Applications (BIC-TA)
Microarray analysis and visualization is very helpful for biologists and clinicians to understand gene expression in cells and to facilitate diagnosis and treatment of patients. However, a typical microarray dataset has thousands of features and a very small number of observations. This very high dimensional data has a massive amount of information which often contains some noise, non-useful information and small number of relevant features for disease or genotype. This paper proposes a
doi:10.1109/bicta.2010.5645247
dblp:conf/bic-ta/AnaissiKG10
fatcat:kodyci5mqfgavbzbb5kefagrp4