AbstractOne of the major challenges in microarray analysis, especially in cancer gene expression profiles, is to determine genes or groups of genes that are highly expressed in cancer cells but not in normal cells. Supervised machine learning techniques are used with microarray datasets to build classification models that improve the diagnostic of different diseases. In this study, we compare the classification accuracy among nine decision tree methods; which are divided into two main categories; the first is single decision tree C4.5, CART, Decision Stump, Random Tree and REPTree. The second category is ensample decision tree such Bagging (C4.5 and REPTree), AdaBoost (C4.5 and REPTree), ADTree, and Random Forests. In addition to the previo...
Ensemble classification methods have shown promise for achieving higher classification accuracy for ...
With the advent of inexpensive microarray technology, biologists have become increasingly reliant on...
DNA microarrays (gene chips), frequently used in biological and medical studies, measure the express...
One of the major challenges in microarray analysis, especially in cancer gene expression profiles, i...
AbstractOne of the major challenges in microarray analysis, especially in cancer gene expression pro...
Whole genome RNA expression studies permit systematic approaches to understanding the correlation be...
This paper presents a literature review of articles related to the use of decision tree classifiers ...
[[abstract]]Background In the application of microarray data, how to select a small number of inform...
The study proposes a decision tree based classification of gene expression and protein display data....
[[abstract]]Background The application of microarray data for cancer classification is important. R...
BACKGROUND: Gene expression data classification is a challenging task due to the large dimensionalit...
Motivation: Microarray experiments generate large datasets with expression values for thousands of g...
In response to the rapid development of DNA Microarray technology, many classification methods have ...
Abstract- Microarray technology today has the ability of having the whole genome spotted on a single...
This considers the challenging task of cancer prediction based on microarray data for the medical co...
Ensemble classification methods have shown promise for achieving higher classification accuracy for ...
With the advent of inexpensive microarray technology, biologists have become increasingly reliant on...
DNA microarrays (gene chips), frequently used in biological and medical studies, measure the express...
One of the major challenges in microarray analysis, especially in cancer gene expression profiles, i...
AbstractOne of the major challenges in microarray analysis, especially in cancer gene expression pro...
Whole genome RNA expression studies permit systematic approaches to understanding the correlation be...
This paper presents a literature review of articles related to the use of decision tree classifiers ...
[[abstract]]Background In the application of microarray data, how to select a small number of inform...
The study proposes a decision tree based classification of gene expression and protein display data....
[[abstract]]Background The application of microarray data for cancer classification is important. R...
BACKGROUND: Gene expression data classification is a challenging task due to the large dimensionalit...
Motivation: Microarray experiments generate large datasets with expression values for thousands of g...
In response to the rapid development of DNA Microarray technology, many classification methods have ...
Abstract- Microarray technology today has the ability of having the whole genome spotted on a single...
This considers the challenging task of cancer prediction based on microarray data for the medical co...
Ensemble classification methods have shown promise for achieving higher classification accuracy for ...
With the advent of inexpensive microarray technology, biologists have become increasingly reliant on...
DNA microarrays (gene chips), frequently used in biological and medical studies, measure the express...