Despite the ease of collecting abundance of data about various phenomena, obtaining labeled data needed for learning models with high predictive performance remains a difficult and expensive task in many domains. This issue is particularly present in the case of the analysis of scientific data where obtaining labeled data typically requires expensive experiments. Moreover, in the analysis of scientific data, another issue is of fundamental importance: the interpretability of the models and the explainability of their decisions. By taking into account these considerations, we propose a novel semi-supervised method to learn regression trees. Thanks to the semi-supervised machine learning approach, the method is able to exploit information com...
The most common machine learning approach is supervised learning, which uses labeled data for buildi...
QSAR (quantitative structure-activity relationship) modeling is one of the well developed areas in d...
A good QSAR model comprises several components. Predictive accuracy is paramount, but it is not the ...
Despite the ease of collecting abundance of data about various phenomena, obtaining labeled data nee...
The predictive performance of traditional supervised methods heavily depends on the amount of labele...
A Quantitative Structure-Activity Relationship (QSAR) study is an attempt to model some biological a...
Quantitative Structure‐Activity Relationship (QSAR) models have been successfully applied to lead op...
The predictive performance of supervised learning methods relies on large amounts of labeled data. D...
Quantitative Structure-Activity Relationship (QSAR) models are critical in various areas of drug dis...
During the last decade non-linear machine-learning methods have gained popularity among QSAR modeler...
Structure Activity Relationship (SAR) modelling capitalises on techniques developed within the compu...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
We investigate the learning of quantitative structure activity relationships (QSARs) as a case-study...
Prediction of the capability of a data set to be modeled by a statistical algorithm in the developme...
In drug discovery prediction of the activity of the compound, or its class label, based on the chemi...
The most common machine learning approach is supervised learning, which uses labeled data for buildi...
QSAR (quantitative structure-activity relationship) modeling is one of the well developed areas in d...
A good QSAR model comprises several components. Predictive accuracy is paramount, but it is not the ...
Despite the ease of collecting abundance of data about various phenomena, obtaining labeled data nee...
The predictive performance of traditional supervised methods heavily depends on the amount of labele...
A Quantitative Structure-Activity Relationship (QSAR) study is an attempt to model some biological a...
Quantitative Structure‐Activity Relationship (QSAR) models have been successfully applied to lead op...
The predictive performance of supervised learning methods relies on large amounts of labeled data. D...
Quantitative Structure-Activity Relationship (QSAR) models are critical in various areas of drug dis...
During the last decade non-linear machine-learning methods have gained popularity among QSAR modeler...
Structure Activity Relationship (SAR) modelling capitalises on techniques developed within the compu...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
We investigate the learning of quantitative structure activity relationships (QSARs) as a case-study...
Prediction of the capability of a data set to be modeled by a statistical algorithm in the developme...
In drug discovery prediction of the activity of the compound, or its class label, based on the chemi...
The most common machine learning approach is supervised learning, which uses labeled data for buildi...
QSAR (quantitative structure-activity relationship) modeling is one of the well developed areas in d...
A good QSAR model comprises several components. Predictive accuracy is paramount, but it is not the ...