In the pharmaceutical industry it is common to generate many QSAR models from training sets containing a large number of molecules and a large number of descriptors. The best QSAR methods are those that can generate the most accurate predictions but that are not overly expensive computationally. In this paper we compare eXtreme Gradient Boosting (XGBoost) to random forest and single-task deep neural nets on 30 in-house data sets. While XGBoost has many adjustable parameters, we can define a set of standard parameters at which XGBoost makes predictions, on the average, better than those of random forest and almost as good as those of deep neural nets. The biggest strength of XGBoost is its speed. Whereas efficient use of random forest requir...
Novel, often quite technical algorithms, forensembling artificial neural networks are constantly sug...
Boosting is one of the most popular and powerful learning algorithms. However, due to its sequential...
One of the uses of medical data from diabetes patients is to produce models that can be used by medi...
In the pharmaceutical industry it is common to generate many QSAR models from training sets containi...
Following the explosive growth in chemical and biological data, the shift from traditional methods o...
Following the explosive growth in chemical and biological data, the shift from traditional methods o...
Neural networks were widely used for quantitative structure–activity relationships (QSAR) in the 199...
ABSTRACT: Neural networks were widely used for quantitative structure−activity relationships (QSAR) ...
The application of Machine Learning to cheminformatics is a large and active field of research, but ...
Tree boosting has empirically proven to be a highly effective approach to predictive modeling. It ha...
Parameters used to train the xgboost final models through the extreme gradient boosting algorithm in...
Random forest and gradient boosting models are commonly found in publications using prediction model...
<p><b>A</b> Using the angle as the input feature (red), the Machine Learning algorithm is trained to...
Thanks to its outstanding performances, boosting has rapidly gained wide acceptance among actuaries....
Recent expansions of technology led to growth and availability of different types of data. This, thu...
Novel, often quite technical algorithms, forensembling artificial neural networks are constantly sug...
Boosting is one of the most popular and powerful learning algorithms. However, due to its sequential...
One of the uses of medical data from diabetes patients is to produce models that can be used by medi...
In the pharmaceutical industry it is common to generate many QSAR models from training sets containi...
Following the explosive growth in chemical and biological data, the shift from traditional methods o...
Following the explosive growth in chemical and biological data, the shift from traditional methods o...
Neural networks were widely used for quantitative structure–activity relationships (QSAR) in the 199...
ABSTRACT: Neural networks were widely used for quantitative structure−activity relationships (QSAR) ...
The application of Machine Learning to cheminformatics is a large and active field of research, but ...
Tree boosting has empirically proven to be a highly effective approach to predictive modeling. It ha...
Parameters used to train the xgboost final models through the extreme gradient boosting algorithm in...
Random forest and gradient boosting models are commonly found in publications using prediction model...
<p><b>A</b> Using the angle as the input feature (red), the Machine Learning algorithm is trained to...
Thanks to its outstanding performances, boosting has rapidly gained wide acceptance among actuaries....
Recent expansions of technology led to growth and availability of different types of data. This, thu...
Novel, often quite technical algorithms, forensembling artificial neural networks are constantly sug...
Boosting is one of the most popular and powerful learning algorithms. However, due to its sequential...
One of the uses of medical data from diabetes patients is to produce models that can be used by medi...