This chapter focuses on the use of ensembles of classifiers in Bioinformatics. Due to the complex relationships in the biological data several recent works show that often ensembles of learning algorithms outperform stand-alone methods. The main idea is that averaging the different hypotheses of the classifiers, the combined systems may produce a good approximation of the true hypothesis. After a short introduction on the basic concepts of the combination of classifiers, a detailed review of the existing literature is provided by discussing the most relevant ensemble approaches applied to protein, peptide and microarray classification. Various critical issues related to bioinformatics datasets are discussed and some suggestions on the desig...
Scientists involved in the area of proteomics are currently seeking integrated, customised and valid...
The gene microarray analysis and classification have demonstrated an effective way for the effective...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
This chapter focuses on the use of ensembles of classifiers in Bioinformatics. Due to the complex re...
Ensemble learning is an intensively studies technique in machine learning and pattern recognition. R...
Abstract—The combination of multiple classifiers using ensem-ble methods is increasingly important f...
Modern molecular biology increasingly relies on the application of high-throughput technologies for ...
It is well known in the literature that an ensemble of classifiers obtains good performance with res...
The focus of this work is the use of ensembles of classifiers for predicting HIV protease cleavage s...
Research Doctorate - Doctor of Philosophy (PhD)We study the search for the best ensemble combination...
Several solutions have been proposed to exploit the availability of heterogeneous sources of biomole...
We propose a method for constructing classifiers using logical combinations of elementary rules. The...
The microarray data classification is an open and active research field. The development of more acc...
NoMicroarray data analysis and classification has demonstrated convincingly that it provides an effe...
This paper studies the problem of building a machine learning method for biological data. Various fe...
Scientists involved in the area of proteomics are currently seeking integrated, customised and valid...
The gene microarray analysis and classification have demonstrated an effective way for the effective...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...
This chapter focuses on the use of ensembles of classifiers in Bioinformatics. Due to the complex re...
Ensemble learning is an intensively studies technique in machine learning and pattern recognition. R...
Abstract—The combination of multiple classifiers using ensem-ble methods is increasingly important f...
Modern molecular biology increasingly relies on the application of high-throughput technologies for ...
It is well known in the literature that an ensemble of classifiers obtains good performance with res...
The focus of this work is the use of ensembles of classifiers for predicting HIV protease cleavage s...
Research Doctorate - Doctor of Philosophy (PhD)We study the search for the best ensemble combination...
Several solutions have been proposed to exploit the availability of heterogeneous sources of biomole...
We propose a method for constructing classifiers using logical combinations of elementary rules. The...
The microarray data classification is an open and active research field. The development of more acc...
NoMicroarray data analysis and classification has demonstrated convincingly that it provides an effe...
This paper studies the problem of building a machine learning method for biological data. Various fe...
Scientists involved in the area of proteomics are currently seeking integrated, customised and valid...
The gene microarray analysis and classification have demonstrated an effective way for the effective...
Unprecedented amount of data coming from various high-throughput techniques in biomedical research ...