Title
Genetic algorithms and silhouette measures applied to microarray data classification
Abstract
Microarray technology allows large-scale parallel measurements of the expression of many thousands genes and thus aiding in the development of efficient cancer diagnosis and classification platforms. In this paper, we apply the genetic algorithm and the silhouette statistic in conjunction with several distance functions to the problem of multi-class prediction. We examine two widely used sets of gene expression data, measured across sets of tumors, and present the results of classification accuracy on these two datasets by our methods. Our best success rate of tumor classification has better accuracy than many previously reported methods and it provides a useful method towards a complete tool in this domain.
Year
Venue
Keywords
2005
APBC
microarray data,distance function,genetic algorithm
Field
DocType
Citations 
Statistic,Pattern recognition,Silhouette,Computer science,Microarray analysis techniques,Artificial intelligence,Gene chip analysis,Bioinformatics,Genetic algorithm,Machine learning
Conference
1
PageRank 
References 
Authors
0.38
5
5
Name
Order
Citations
PageRank
Tsun-Chen Lin1161.54
Ru-Sheng Liu2717.81
Shu-Yuan Chen3797.23
Chen-Chung Liu449253.96
Chien-Yu Chen536729.24