Feature Ranking by Classification Accuracy Estimation of Multiple Data Samples
2013
Natalia Novoselova, Igor Tom, Arkādijs Borisovs, Inese Poļaka

This article considers the gene ranking algorithm for the microarray data. The rank vector is estimated by classifications of the random data samples. At each iteration, the ranks of genes participating in the successful classification become higher. Unlike other methods of feature selection, the proposed algorithm allows increasing the generality of the classification models by construction of the balanced training samples and taking into account the descriptiveness of the gene combinations by the subset estimation.


Atslēgas vārdi
Biomarker, classification, feature ranking, gene expression

Novoselova, N., Tom, I., Borisovs, A., Poļaka, I. Feature Ranking by Classification Accuracy Estimation of Multiple Data Samples. Information Technology and Management Science. Nr.16, 2013, 95.-100.lpp. ISSN 2255-9086. e-ISSN 2255-9094.

Publikācijas valoda
English (en)
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