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Dimensionality Reduction Methods for Biomedical Data
- 1.0491813 - ÚI 2019 RIV CZ eng J - Journal Article
Kalina, Jan - Schlenker, A.
Dimensionality Reduction Methods for Biomedical Data.
Lékař a technika. Biomedicinské inženýrství a informatika. Roč. 48, č. 1 (2018), s. 29-35. ISSN 0301-5491
R&D Projects: GA MZd(CZ) NV15-29835A
Institutional support: RVO:67985807
Keywords : biomedical data * dimensionality * biostatistics * multivariate analysis * sparsity
OECD category: Computer sciences, information science, bioinformathics (hardware development to be 2.2, social aspect to be 5.8)
Result website:
https://ojs.cvut.cz/ojs/index.php/CTJ/article/view/4425/4722
The aim of this paper is to present basic principles of common multivariate statistical approaches to dimensionality reduction and to discuss three particular approaches, namely feature extraction, (prior) variable selection, and sparse variable selection. Their important examples are also presented in the paper, which includes the principal component analysis, minimum redundancy maximum relevance variable selection, and nearest shrunken centroid classifier with an intrinsic variable selection. Each of the three methods is illustrated on a real dataset with a biomedical motivation, including a biometric identification based on keystroke dynamics or a study of metabolomic profiles. Advantages and benefits of performing dimensionality reduction of multivariate data are discussed.
Permanent Link: http://hdl.handle.net/11104/0285432
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