Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5513496 | Methods | 2016 | 47 Pages |
Abstract
This paper surveys main principles of feature selection and their recent applications in big data bioinformatics. Instead of the commonly used categorization into filter, wrapper, and embedded approaches to feature selection, we formulate feature selection as a combinatorial optimization or search problem and categorize feature selection methods into exhaustive search, heuristic search, and hybrid methods, where heuristic search methods may further be categorized into those with or without data-distilled feature ranking measures.
Keywords
Evolutionary algorithmsGenetic algorithmsPattern recognitionParticle swarm optimizationRandom forestsClusteringData miningMicroarrayComputational biologyNeural networksClassificationSupport vector machinesRough setsEvolutionary computationSoft computingFuzzy logicBiomarkersSwarm intelligenceComputational intelligenceMachine learning
Related Topics
Life Sciences
Biochemistry, Genetics and Molecular Biology
Biochemistry
Authors
Lipo Wang, Yaoli Wang, Qing Chang,