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IDEAL
2007
Springer

Analysis of Tiling Microarray Data by Learning Vector Quantization and Relevance Learning

13 years 10 months ago
Analysis of Tiling Microarray Data by Learning Vector Quantization and Relevance Learning
We apply learning vector quantization to the analysis of tiling microarray data. As an example we consider the classification of C. elegans genomic probes as intronic or exonic. Training is based on the current annotation of the genome. Relevance learning techniques are used to weight and select features according to their importance for the classification. Among other findings, the analysis suggests that correlations between the perfect match intensity of a particular probe and its neighbors are highly relevant for successful exon identification.
Michael Biehl, Rainer Breitling, Yang Li
Added 08 Jun 2010
Updated 08 Jun 2010
Type Conference
Year 2007
Where IDEAL
Authors Michael Biehl, Rainer Breitling, Yang Li
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