The ability to interpret the predictions made by quantitative structure–activity relationships (QSARs) offers a number of advantages. While QSARs built using nonlinear modeling approaches, such as the popular Random Forest algorithm, might sometimes be more predictive than those built using linear modeling approaches, their predictions have been perceived as difficult to interpret. However, a growing number of approaches have been proposed for interpreting nonlinear QSAR models in general and Random Forest in particular. In the current work, we compare the performance of Random Forest to those of two widely used linear modeling approaches: linear Support Vector Machines (SVMs) (or Support Vector Regression (SVR)) and partial least-squares (...
Variable selection is of crucial significance in QSAR modeling since it increases the model predicti...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
The reliability of a QSAR classification model depends on its capacity to achieve confident predicti...
The ability to interpret the predictions made by quantitative structure–activity relationships (QSAR...
The ability to interpret the predictions made by quantitative structure–activity relationships (QSAR...
The ability to interpret the predictions made by quantitative structure–activity relationships (QSAR...
The ability to interpret the predictions made by quantitative structure activity relationships (QSAR...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
A good QSAR model comprises several components. Predictive accuracy is paramount, but it is not the ...
Variable selection is of crucial significance in QSAR modeling since it increases the model predicti...
Distributions of multi-class macro F1 score for prediction of growth conditions from mRNA or protein...
Variable selection is of crucial significance in QSAR modeling since it increases the model predicti...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
The reliability of a QSAR classification model depends on its capacity to achieve confident predicti...
The ability to interpret the predictions made by quantitative structure–activity relationships (QSAR...
The ability to interpret the predictions made by quantitative structure–activity relationships (QSAR...
The ability to interpret the predictions made by quantitative structure–activity relationships (QSAR...
The ability to interpret the predictions made by quantitative structure activity relationships (QSAR...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
A good QSAR model comprises several components. Predictive accuracy is paramount, but it is not the ...
Variable selection is of crucial significance in QSAR modeling since it increases the model predicti...
Distributions of multi-class macro F1 score for prediction of growth conditions from mRNA or protein...
Variable selection is of crucial significance in QSAR modeling since it increases the model predicti...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
The reliability of a QSAR classification model depends on its capacity to achieve confident predicti...