An unsupervised data clustering method, called the local maximum clustering (LMC) method, is proposed for identifying clusters in experiment data sets based on research interest. A magnitude property is defined according to research purposes, and data sets are clustered around each local maximum of the magnitude property. By properly defining a magnitude property, this method can overcome many difficulties in microarray data clustering such as reduced projection in similarities, noises, and arbitrary gene distribution. To critically evaluate the performance of this clustering method in comparison with other methods, we designed three model data sets with known cluster distributions and applied the LMC method as well as the hierarchic clust...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
Motivation: Microarray experiments generate a considerable amount of data, which analyzed properly h...
An unsupervised data clustering method, called the local maximum clustering (LMC) method, is propose...
The DNA data are huge multidimensional which contains the simultaneous gene expression and it uses t...
Microarray data clustering represents a basic exploratory tool to find groups of genes exhibiting si...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
In the context of genome research, the method of gene expression analysis has been used for several ...
This dissertation focuses on methodology specific to microarray data analyses that organize the data...
This thesis explores and evaluates MAXCCLUS, a bioinformatics clustering algorithm, which was design...
The advent of DNA microarray technology has enabled biologists to monitor the expression levels (MRN...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
This thesis explores and evaluates MAXCCLUS, a bioinformatics clustering algorithm, which was design...
A clustering method based on recursive bisection is introduced for analyzing microarray gene express...
This thesis explores and evaluates MAXCCLUS, a bioinformatics clustering algorithm, which was design...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
Motivation: Microarray experiments generate a considerable amount of data, which analyzed properly h...
An unsupervised data clustering method, called the local maximum clustering (LMC) method, is propose...
The DNA data are huge multidimensional which contains the simultaneous gene expression and it uses t...
Microarray data clustering represents a basic exploratory tool to find groups of genes exhibiting si...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
In the context of genome research, the method of gene expression analysis has been used for several ...
This dissertation focuses on methodology specific to microarray data analyses that organize the data...
This thesis explores and evaluates MAXCCLUS, a bioinformatics clustering algorithm, which was design...
The advent of DNA microarray technology has enabled biologists to monitor the expression levels (MRN...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
This thesis explores and evaluates MAXCCLUS, a bioinformatics clustering algorithm, which was design...
A clustering method based on recursive bisection is introduced for analyzing microarray gene express...
This thesis explores and evaluates MAXCCLUS, a bioinformatics clustering algorithm, which was design...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
Motivation: Microarray experiments generate a considerable amount of data, which analyzed properly h...