In drug discovery, classification is a well established in silico method based on machine learning algorithms. However, since the activity value on a target protein is described as a continuous value, a regressional approach is worth being considered as well. The results of the regression can then be turned into classification results with a given threshold value. To further improve the results, a new method called optimally weighted ensembles that uses a combination of more than one model to build a better performing ensemble of models, is applied here. This method is used in the context of drug discovery for the first time. Naturally, it is crucial to choose suitable models for the specific problem, if any prior knowledge is available. S...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The current rise in the amount of data generated has necessitated the use of machine learning in the...
An ensemble of classifiers is proposed for predictive ranking of the observations in a dataset so th...
Studies on drug design datasets are continuing to grow. These datasets are usually known as hard mod...
Logistic regression is one of the commonly used classification methods. It has some advantages, spec...
Motivation: Artificial intelligence, trained via machine learning (e.g. neural nets, random forests)...
Abstract: Drug design datasets are usually known as hard-modeled, having a large number of features ...
8th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Manag...
The application of Machine Learning to cheminformatics is a large and active field of research, but ...
Ensembles of classifiers proved potential in getting higher accuracy compared to a single classifier...
To develop a new ensemble learning method and construct highly predictive regression models in chemo...
While the thesis is framed from the systems thinking perspective, however, the main focus is on the ...
Proceedings of the 24th International Conference on Intelligent Systems for Molecular Biology (ISMB ...
Abstract We propose a new classification method for prediction of drug properties, called the Random...
Ensemble learning has been shown to significantly improve predictive accuracy in a variety of machin...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The current rise in the amount of data generated has necessitated the use of machine learning in the...
An ensemble of classifiers is proposed for predictive ranking of the observations in a dataset so th...
Studies on drug design datasets are continuing to grow. These datasets are usually known as hard mod...
Logistic regression is one of the commonly used classification methods. It has some advantages, spec...
Motivation: Artificial intelligence, trained via machine learning (e.g. neural nets, random forests)...
Abstract: Drug design datasets are usually known as hard-modeled, having a large number of features ...
8th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Manag...
The application of Machine Learning to cheminformatics is a large and active field of research, but ...
Ensembles of classifiers proved potential in getting higher accuracy compared to a single classifier...
To develop a new ensemble learning method and construct highly predictive regression models in chemo...
While the thesis is framed from the systems thinking perspective, however, the main focus is on the ...
Proceedings of the 24th International Conference on Intelligent Systems for Molecular Biology (ISMB ...
Abstract We propose a new classification method for prediction of drug properties, called the Random...
Ensemble learning has been shown to significantly improve predictive accuracy in a variety of machin...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The current rise in the amount of data generated has necessitated the use of machine learning in the...
An ensemble of classifiers is proposed for predictive ranking of the observations in a dataset so th...