The generalization abilities of machine learning algorithms often depend on the algorithms’ initialization, parameter settings, training sets, or feature selections. For instance, SVM classifier performance largely relies on whether the selected kernel functions are suitable for real application data. To enhance the performance of individual classifiers, this dissertation proposes classifier fusion models using computational intelligence knowledge to combine different classifiers. The first fusion model called T1FFSVM combines multiple SVM classifiers through constructing a fuzzy logic system. T1FFSVM can be improved by tuning the fuzzy membership functions of linguistic variables using genetic algorithms. The improved model is called GFFSV...
The explosive growth of data in volume, velocity and diversity that are produced by medical applicat...
Abstract—Soft computing is gradually opening up several possi-bilities in bioinformatics, especially...
The use of machine learning in medical decision support systems can improve diagnostic accuracy and ...
The generalization abilities of machine learning algorithms often depend on the algorithms’ initiali...
Background: The abundance of gene expression microarray data has led to the development of machine l...
This paper introduces a new classifier, that is based on fuzzy-integration schemes controlled by a g...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
It has been shown that while a single genomic data source might not be sufficiently informative, fus...
This paper describes a system managing data fusion in the Pattern Recognition (PR) field. The proble...
Background: Gene expression data are characteristically high dimensional with a small sample size in...
One of the most fundamental issues in computational biology is the classification of biological sequ...
Due to complexity of biomedical problems, adaptive and intelligent knowledge discovery and data mini...
Data fusion is the process of integrating information from multiple sources to produce specific, com...
We compare two diverse classification strategies on real-life biomedical data. One is based on a gen...
This paper addresses automatic recognition of microarray patterns, a capability that could have a ma...
The explosive growth of data in volume, velocity and diversity that are produced by medical applicat...
Abstract—Soft computing is gradually opening up several possi-bilities in bioinformatics, especially...
The use of machine learning in medical decision support systems can improve diagnostic accuracy and ...
The generalization abilities of machine learning algorithms often depend on the algorithms’ initiali...
Background: The abundance of gene expression microarray data has led to the development of machine l...
This paper introduces a new classifier, that is based on fuzzy-integration schemes controlled by a g...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
It has been shown that while a single genomic data source might not be sufficiently informative, fus...
This paper describes a system managing data fusion in the Pattern Recognition (PR) field. The proble...
Background: Gene expression data are characteristically high dimensional with a small sample size in...
One of the most fundamental issues in computational biology is the classification of biological sequ...
Due to complexity of biomedical problems, adaptive and intelligent knowledge discovery and data mini...
Data fusion is the process of integrating information from multiple sources to produce specific, com...
We compare two diverse classification strategies on real-life biomedical data. One is based on a gen...
This paper addresses automatic recognition of microarray patterns, a capability that could have a ma...
The explosive growth of data in volume, velocity and diversity that are produced by medical applicat...
Abstract—Soft computing is gradually opening up several possi-bilities in bioinformatics, especially...
The use of machine learning in medical decision support systems can improve diagnostic accuracy and ...