As the size of the biomedical databases are growing day by day, finding an essential features in the disease prediction have become more complex due to high dimensionality and sparsity problems. Also, due to the availability of a large number of micro-array datasets in the biomedical repositories, it is difficult to analyze, predict and interpret the feature information using the traditional feature selection based classification models. Most of the traditional feature selection based classification algorithms have computational issues such as dimension reduction, uncertainty and class imbalance on microarray datasets. Ensemble classifier is one of the scalable models for extreme learning machine due to its high efficiency, the fast proces...
Classification analysis is widely adopted for healthcare applications to support medical diagnostic ...
The objective of this study is to develop an ensemble classifier with Merit Merge feature selection ...
Classification problem especially for high dimensional datasets have attracted many researchers in o...
As the size of the biomedical databases are growing day by day, finding an essential features in the...
This study describes the prediction of heart disease using ensemble classifiers with parameter optim...
Selective ensemble learning is a technique that selects a subset of diverse and accurate basic model...
AbstractMicroarray data are often extremely asymmetric in dimensionality, highly redundant and noisy...
Explosive increase of dataset features may intensify the complexity of medical data analysis in deci...
Explosive increase of dataset features may intensify the complexity of medical data analysis in deci...
The microarray data classification is an open and active research field. The development of more acc...
Abstract: In this paper we have proposed a PSO based classification model for multidimensional real ...
NoMicroarray data analysis and classification has demonstrated convincingly that it provides an effe...
Background Machine learning is one kind of machine intelligence technique that learns from data and ...
Data mining plays an important role in the process of classifying between the normal and the cancero...
Microarrays are novel biotechnological technology that is being used widely in cancer research. By a...
Classification analysis is widely adopted for healthcare applications to support medical diagnostic ...
The objective of this study is to develop an ensemble classifier with Merit Merge feature selection ...
Classification problem especially for high dimensional datasets have attracted many researchers in o...
As the size of the biomedical databases are growing day by day, finding an essential features in the...
This study describes the prediction of heart disease using ensemble classifiers with parameter optim...
Selective ensemble learning is a technique that selects a subset of diverse and accurate basic model...
AbstractMicroarray data are often extremely asymmetric in dimensionality, highly redundant and noisy...
Explosive increase of dataset features may intensify the complexity of medical data analysis in deci...
Explosive increase of dataset features may intensify the complexity of medical data analysis in deci...
The microarray data classification is an open and active research field. The development of more acc...
Abstract: In this paper we have proposed a PSO based classification model for multidimensional real ...
NoMicroarray data analysis and classification has demonstrated convincingly that it provides an effe...
Background Machine learning is one kind of machine intelligence technique that learns from data and ...
Data mining plays an important role in the process of classifying between the normal and the cancero...
Microarrays are novel biotechnological technology that is being used widely in cancer research. By a...
Classification analysis is widely adopted for healthcare applications to support medical diagnostic ...
The objective of this study is to develop an ensemble classifier with Merit Merge feature selection ...
Classification problem especially for high dimensional datasets have attracted many researchers in o...