Random forests consisting of an ensemble of regression trees with equal weights are frequently used for design of predictive models. In this article, we consider an extension of the methodology by representing the regression trees in the form of probabilistic trees and analyzing the nature of heteroscedasticity. The probabilistic tree representation allows for analytical computation of confidence intervals (CIs), and the tree weight optimization is expected to provide stricter CIs with comparable performance in mean error. We approached the ensemble of probabilistic trees’ prediction from the perspectives of a mixture distribution and as a weighted sum of correlated random variables. We applied our methodology to the drug sensitivity predic...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
A random forest (RF) predictor is an ensemble of individual tree predictors. As part of their constr...
Background: A significant problem in precision medicine is the prediction of drug sensitivity for in...
Random forests consisting of an ensemble of regression trees with equal weights are frequently used ...
Samples collected in pharmacogenomics databases typically belong to various cancer types. For design...
Modeling sensitivity to drugs based on genetic characterizations is a significant challenge in the a...
Random Forests™ is reported to be one of the most accurate classification algorithms in complex data...
Abstract Background While random forests are one of the most successful machine learning methods, it...
Uncertainty measures estimate the reliability of a predictive model. Especially in the field of mole...
Machine learning approaches are heavily used to produce models that will one day support clinical d...
Machine learning methods trained on cancer cell line panels are intensively studied for the predicti...
International audienceBackground: Predictors of paclitaxel sensitivity in breast cancer published te...
Machine learning approaches are heavily used to produce models that will one day support...
Machine learning approaches are heavily used to produce models that will one day suppor...
Random forests are a statistical learning method widely used in many areas of scientific research es...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
A random forest (RF) predictor is an ensemble of individual tree predictors. As part of their constr...
Background: A significant problem in precision medicine is the prediction of drug sensitivity for in...
Random forests consisting of an ensemble of regression trees with equal weights are frequently used ...
Samples collected in pharmacogenomics databases typically belong to various cancer types. For design...
Modeling sensitivity to drugs based on genetic characterizations is a significant challenge in the a...
Random Forests™ is reported to be one of the most accurate classification algorithms in complex data...
Abstract Background While random forests are one of the most successful machine learning methods, it...
Uncertainty measures estimate the reliability of a predictive model. Especially in the field of mole...
Machine learning approaches are heavily used to produce models that will one day support clinical d...
Machine learning methods trained on cancer cell line panels are intensively studied for the predicti...
International audienceBackground: Predictors of paclitaxel sensitivity in breast cancer published te...
Machine learning approaches are heavily used to produce models that will one day support...
Machine learning approaches are heavily used to produce models that will one day suppor...
Random forests are a statistical learning method widely used in many areas of scientific research es...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
A random forest (RF) predictor is an ensemble of individual tree predictors. As part of their constr...
Background: A significant problem in precision medicine is the prediction of drug sensitivity for in...