Go to main content
Formate
Cite
Citation
American Psychological Association 7th edition (APA 7th)
🇺🇸 English, US
Mungloo-Dilmohamud, Z., Jaufeerally-Fakim, Y., & Peña-Reyes, C. (2017). A Meta-Review of Feature Selection Techniques in the Context of Microarray Data. In Lecture Notes in Computer Science (pp. 33–49). Springer International Publishing. https://doi.org/10.1007/978-3-319-56148-6_3
Formate
BibTeX
MARCXML
TextMARC
MARC
DublinCore
EndNote
NLM
RefWorks
RIS

Résumé

Microarray technologies produce very large amounts of data that need to be classified for interpretation. Large data coupled with small sample sizes make it challenging for researchers to get useful information and therefore a lot of effort goes into the design and testing of feature selection tools; literature abounds with description of numerous methods. In this paper we select five representative review papers in the field of feature selection for microarray data in order to understand their underlying classification of methods. Finally, on this base, we propose an extended taxonomy for categorizing feature selection techniques and use it to classify the main methods presented in the selected reviews.

Einzelheiten

Aktionen