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Statistical inference / Dimension reduction / Regression analysis / Gene expression profiling / Feature selection / Stepwise regression / Ridge / Resampling / Supervised learning / Statistics / Microarrays / Gene expression
Date: 2010-06-07 16:59:42
Statistical inference
Dimension reduction
Regression analysis
Gene expression profiling
Feature selection
Stepwise regression
Ridge
Resampling
Supervised learning
Statistics
Microarrays
Gene expression

BMC Bioinformatics BioMed Central Open Access

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