Properly designing a wavelet neural network (WNN) is crucial for achieving the optimal generalization performance. In this paper, two different approaches were proposed for improving the predictive capability of WNNs. First, the types of activation functions used in the hidden layer of the WNN were varied. Second, the proposed enhanced fuzzy c-means clustering algorithm—specifically, the modified point symmetry-based fuzzy c-means (MSFCM) algorithm—was employed in selecting the locations of the translation vectors of the WNN. The modified WNN was then applied to heterogeneous cancer classification using four different microarray benchmark datasets. The comparative experimental results showed that the proposed methodology achieved an almost ...
The classification of cell types plays an essential role in monitoring the growth of cancer cells. O...
Cancer has become one of the major factors responsible for global deaths, due to late diagnoses and ...
The influx of data in bioinformatics is primarily in the form of DNA, RNA, and protein sequences. Th...
Wavelet neural networks (WNNs) have emerged as a vital alternative to the vastly studied multilayer ...
Properly designing a wavelet neural network (WNN) is crucial for achieving the optimal generalizatio...
Analysis and interpretation of DNA Microarray data is a fundamental task in bioinformatics. Feature ...
Accurate classification of cancers based on microarray gene expressions is very important for doctor...
: Microarray is a technology that enables simultaneously analysis of thousands of genes in DNA struc...
Gene expression profiles belonging to DNA microarrays are composed of thousands of genes at the same...
The cancer cell gene expression data in general has a very large feature and requires analysis to fi...
Microarray technology can measure thousands of genes which are useful for biologist to study and cla...
ABSTRACT The classification of cancers subtypes is essential for future clinical accomplishments of ...
Bulut, Hasan/0000-0002-4872-5698WOS: 000544909800001The microarray technology enables the analysis o...
Motivation: In the interpretation of gene expression data from a group of microarray experiments tha...
Cancer can be classified based on its morphologis structure or gene expression values in microarray ...
The classification of cell types plays an essential role in monitoring the growth of cancer cells. O...
Cancer has become one of the major factors responsible for global deaths, due to late diagnoses and ...
The influx of data in bioinformatics is primarily in the form of DNA, RNA, and protein sequences. Th...
Wavelet neural networks (WNNs) have emerged as a vital alternative to the vastly studied multilayer ...
Properly designing a wavelet neural network (WNN) is crucial for achieving the optimal generalizatio...
Analysis and interpretation of DNA Microarray data is a fundamental task in bioinformatics. Feature ...
Accurate classification of cancers based on microarray gene expressions is very important for doctor...
: Microarray is a technology that enables simultaneously analysis of thousands of genes in DNA struc...
Gene expression profiles belonging to DNA microarrays are composed of thousands of genes at the same...
The cancer cell gene expression data in general has a very large feature and requires analysis to fi...
Microarray technology can measure thousands of genes which are useful for biologist to study and cla...
ABSTRACT The classification of cancers subtypes is essential for future clinical accomplishments of ...
Bulut, Hasan/0000-0002-4872-5698WOS: 000544909800001The microarray technology enables the analysis o...
Motivation: In the interpretation of gene expression data from a group of microarray experiments tha...
Cancer can be classified based on its morphologis structure or gene expression values in microarray ...
The classification of cell types plays an essential role in monitoring the growth of cancer cells. O...
Cancer has become one of the major factors responsible for global deaths, due to late diagnoses and ...
The influx of data in bioinformatics is primarily in the form of DNA, RNA, and protein sequences. Th...