
Machine Learning Approach
For dimensionality reduction of microarray data
LAP Lambert Academic Publishing
Published on 28. February 2020
Book
Paperback/Softback
152 pages
978-620-0-56843-4 (ISBN)
Description
For past several years, microarray technology has attracted tremendous interest for both scientific community and industry. Recently, the applications of microarrays include gene discovery, disease diagnosis and prognosis, drug discovery, etc. High dimensional data with small sample size is the main problem that generate the application of dimension reduction in microarray data analysis. It is seen that SVM, ANN and NB have recently gained wide popularity for cancer classification problems. An efficient and reliable method of dimension reduction plays an important role to improve the performance of SVM, ANN and NB, when applied for classification of high dimensional microarray data. In this book, we applied different combinations of feature selection / extraction methods, as a novel hybrid dimension reduction method for SVM, ANN and NB classifiers. The obtained results are compared with other popular published dimension reduction methods for SVM, NB and ANN classifiers.
More details
Language
English
Dimensions
Height: 220 mm
Width: 150 mm
Thickness: 10 mm
Weight
244 gr
ISBN-13
978-620-0-56843-4 (9786200568434)
Schweitzer Classification
Persons
Namita Srivastava, PhD in Mathematics, 30 years of experience. Areas of research: Fracture mechanics and Machine learning.C. K. Verma, PhD in Mathematics, 20 years of experience. His research areas include Computational Biology.Rabia Musheer, PhD in Manthematics,10 years of teaching experience.Her research areas include Micro-array data analysis.