<div><p>This article presents individual conditional expectation (ICE) plots, a tool for visualizing the model estimated by any supervised learning algorithm. Classical partial dependence plots (PDPs) help visualize the average partial relationship between the predicted response and one or more features. In the presence of substantial interaction effects, the partial response relationship can be heterogeneous. Thus, an average curve, such as the PDP, can obfuscate the complexity of the modeled relationship. Accordingly, ICE plots refine the PDP by graphing the functional relationship between the predicted response and the feature for <i>individual</i> observations. Specifically, ICE plots highlight the variation in the fitted values across ...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
Many visual depictions of probability distributions, such as error bars, are difficult for users to ...
This article presents Individual Conditional Expectation (ICE) plots, a tool for vi-sualizing the mo...
Since the last decade, we are assisting a widespread use of “black box” Machine Learning algorithms,...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
We present a visual method for assessing the predictive power of models with binary outcomes. This t...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
We propose the conditional predictive impact (CPI), a consistent and unbiased estimator of the assoc...
International audienceIt is becoming increasingly important to explain complex, black-box machine le...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
Many visual depictions of probability distributions, such as error bars, are difficult for users to ...
This article presents Individual Conditional Expectation (ICE) plots, a tool for vi-sualizing the mo...
Since the last decade, we are assisting a widespread use of “black box” Machine Learning algorithms,...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
We present a visual method for assessing the predictive power of models with binary outcomes. This t...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
We propose the conditional predictive impact (CPI), a consistent and unbiased estimator of the assoc...
International audienceIt is becoming increasingly important to explain complex, black-box machine le...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
Many visual depictions of probability distributions, such as error bars, are difficult for users to ...