Publication | Open Access
Gene selection for cancer identification: a decision tree model empowered by particle swarm optimization algorithm
140
Citations
38
References
2014
Year
Based on statistical analysis, our proposed method outperforms other popular classifiers for all test datasets, and is compatible to SVM for certain specific datasets. Further, the housekeeping genes with various expression patterns and tissue-specific genes are identified. These genes provide a high discrimination power on cancer classification.
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