PymRMRe
Parallelized minimum Redundancy Maximum Relevance ensemble feature selection
Description: "Feature selection is an important problem for pattern classification systems. We study how to select good features according
to the maximal statistical dependency criterion based on mutual information. Because of the difficulty in directly implementing the
maximal dependency condition, we first derive an equivalent form, called minimal-redundancy-maximal-relevance criterion (mRMR), for
first-order incremental feature selection. Then, we present a two-stage feature selection algorithm by combining mRMR and other more
sophisticated feature selectors (e.g., wrappers). This allows us to select a compact set of superior features at very low cost. We perform
extensive experimental comparison of our algorithm and other methods using three different classifiers (naive Bayes, support vector
machine, and linear discriminate analysis) and four different data sets (handwritten digits, arrhythmia, NCI cancer cell lines, and
lymphoma tissues). The results confirm that mRMR leads to promising improvement on feature selection and classification accuracy" (Peng, Long and Ding; 2005)
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