AbstractThis paper presents a metaheuristic framework using Harmony Search (HS) with Genetic Algorithm (GA) for gene selection. The internal architecture of the proposed model broadly works in two phases, in the first phase, the model allows the hybridization of HS with GA to compute and evaluate the fitness of the randomly selected solutions of binary strings and then HS ranks the solutions in descending order of their fitness. In the second phase, the offsprings are generated using crossover and mutation operations of GA and finally, those offsprings were selected for the next generation whose fitness value is more than their parents evaluated by SVM classifier. The accuracy of the final gene subsets obtained from this model has been eval...
Rapporteurs : M. Sebag, DR CNRS, LRI, Orsay G. Venturini, Professeur, Ecole Polytechnique de Tours, ...
Gene expression data (DNA microarray) enable researchers to simultaneously measure the levels of exp...
University of Technology, Sydney. Faculty of Engineering and Information Technology.Evolutionary alg...
This paper presents a metaheuristic framework using Harmony Search (HS) with Genetic Algorithm (GA) ...
AbstractThis paper presents a metaheuristic framework using Harmony Search (HS) with Genetic Algorit...
Selecting the most miniature possible set of genes from microarray datasets for clinical diagnosis a...
Gene selection aims at identifying a (small) subset of informative genes from the initial data in or...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
As data mining develops and expands to new application areas, feature selection also reveals various...
In this thesis we made the first steps towards the systematic application of a methodology for autom...
AbstractGene Regulatory Network (GRN) has always gained considerable attention from bioinformatician...
Background Nowadays we are observing an explosion of gene expression data with pheno...
Metaheuristic algorithms are employed to solve complex and large-scale optimization problems in many...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
Microarray technology is widely used to report gene expression data. The inclusion of many features ...
Rapporteurs : M. Sebag, DR CNRS, LRI, Orsay G. Venturini, Professeur, Ecole Polytechnique de Tours, ...
Gene expression data (DNA microarray) enable researchers to simultaneously measure the levels of exp...
University of Technology, Sydney. Faculty of Engineering and Information Technology.Evolutionary alg...
This paper presents a metaheuristic framework using Harmony Search (HS) with Genetic Algorithm (GA) ...
AbstractThis paper presents a metaheuristic framework using Harmony Search (HS) with Genetic Algorit...
Selecting the most miniature possible set of genes from microarray datasets for clinical diagnosis a...
Gene selection aims at identifying a (small) subset of informative genes from the initial data in or...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
As data mining develops and expands to new application areas, feature selection also reveals various...
In this thesis we made the first steps towards the systematic application of a methodology for autom...
AbstractGene Regulatory Network (GRN) has always gained considerable attention from bioinformatician...
Background Nowadays we are observing an explosion of gene expression data with pheno...
Metaheuristic algorithms are employed to solve complex and large-scale optimization problems in many...
One of the most prevalent problems with big data is that many of the features are irrelevant. Gene s...
Microarray technology is widely used to report gene expression data. The inclusion of many features ...
Rapporteurs : M. Sebag, DR CNRS, LRI, Orsay G. Venturini, Professeur, Ecole Polytechnique de Tours, ...
Gene expression data (DNA microarray) enable researchers to simultaneously measure the levels of exp...
University of Technology, Sydney. Faculty of Engineering and Information Technology.Evolutionary alg...