This paper studies the problem of building a machine learning method for biological data. Various feature selection methods and classifier design strategies have been generally used and compared. However, most published articles have applied a certain technique to a certain dataset, and recently several researchers compared these techniques based on several public datasets. We propose an ensemble of classifiers that combine a linear classifier, linear support vector machine, a non-linear classifier, radial basis-support vector machines and a Subspace Classifier. We validate our new method on several recent publicly available datasets both with predictive accuracy of testing samples and through cross validation. Compared with the best perfor...
In named entity recognition (NER) for biomedical literature, approaches based on combined classifier...
The present article is devoted to experimental investigation of the performance of three machine lea...
The emergence of the fields of computational biology and bioinformatics has alleviated the burden of...
This paper studies the problem of building a machine learning method for biological data. Various fe...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
Abstract. Biomedical datasets pose a unique challenge to machine learning and data mining algorithms...
This chapter focuses on the use of ensembles of classifiers in Bioinformatics. Due to the complex re...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
Classifying biological data is a common task in the biomedical context. Predicting the class of new,...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
Abstract Background Machine learning models (classifiers) for classifying genes to biological proces...
Abstract—Microbiome studies are attracting increasing interest, especially in human health applicati...
In this study we report the advances in supervised learning methods that have been devised to analyz...
In named entity recognition (NER) for biomedical literature, approaches based on combined classifier...
The present article is devoted to experimental investigation of the performance of three machine lea...
The emergence of the fields of computational biology and bioinformatics has alleviated the burden of...
This paper studies the problem of building a machine learning method for biological data. Various fe...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
Abstract. Biomedical datasets pose a unique challenge to machine learning and data mining algorithms...
This chapter focuses on the use of ensembles of classifiers in Bioinformatics. Due to the complex re...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
Classifying biological data is a common task in the biomedical context. Predicting the class of new,...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
Abstract Background Machine learning models (classifiers) for classifying genes to biological proces...
Abstract—Microbiome studies are attracting increasing interest, especially in human health applicati...
In this study we report the advances in supervised learning methods that have been devised to analyz...
In named entity recognition (NER) for biomedical literature, approaches based on combined classifier...
The present article is devoted to experimental investigation of the performance of three machine lea...
The emergence of the fields of computational biology and bioinformatics has alleviated the burden of...