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Machine learning / Microarrays / Statistical classification / Biology / Statistics / Support vector machine / Polynomial kernel / Affymetrix / Linear classifier / DNA microarray / Kernel method / Gene expression profiling
Date: 2002-12-19 23:03:34
Machine learning
Microarrays
Statistical classification
Biology
Statistics
Support vector machine
Polynomial kernel
Affymetrix
Linear classifier
DNA microarray
Kernel method
Gene expression profiling

264 Genome Informatics 13: 264–Characteristics of Support Vector Machines in Gene Expression Analysis

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