Variable importance, interaction measures, and partial dependence plots are important summaries in the interpretation of statistical and machine learning models. In this article, we describe new visualization techniques for exploring these model summaries. We construct heatmap and graph-based displays showing variable importance and interaction jointly, which are carefully designed to highlight important aspects of the fit. We describe a new matrix-type layout showing all single and bivariate partial dependence plots, and an alternative layout based on graph Eulerians focusing on key subsets. Our new visualizations are model-agnostic and are applicable to regression and classification supervised learning settings. They enhance interpretatio...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
With the increase of complex Machine Learning (ML) models making decisions in everyday life in a wi...
With the increase of complex Machine Learning (ML) models making decisions in everyday life in a wi...
Introduction: Existing methods such as correlation plots and cluster heat maps are insufficient in t...
Variable importance graphs are great tool to see, in a model, which variables are interesting. Since...
<div><p>This article presents individual conditional expectation (ICE) plots, a tool for visualizing...
Interaction is a vital component in the visualization of multivariate networks. It enables greater a...
Interaction is a vital component in the visualization of multivariate networks. It enables greater a...
In recent years, data analysts have been confronted by increasing amounts of data, often in the form...
This article presents Individual Conditional Expectation (ICE) plots, a tool for vi-sualizing the mo...
Building an effective Machine Learning (ML) model for a data set is a difficult task involving vario...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
With the increase of complex Machine Learning (ML) models making decisions in everyday life in a wi...
With the increase of complex Machine Learning (ML) models making decisions in everyday life in a wi...
Introduction: Existing methods such as correlation plots and cluster heat maps are insufficient in t...
Variable importance graphs are great tool to see, in a model, which variables are interesting. Since...
<div><p>This article presents individual conditional expectation (ICE) plots, a tool for visualizing...
Interaction is a vital component in the visualization of multivariate networks. It enables greater a...
Interaction is a vital component in the visualization of multivariate networks. It enables greater a...
In recent years, data analysts have been confronted by increasing amounts of data, often in the form...
This article presents Individual Conditional Expectation (ICE) plots, a tool for vi-sualizing the mo...
Building an effective Machine Learning (ML) model for a data set is a difficult task involving vario...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...
Ideally, statistical parametric model fitting is followed by various summary tables which show predi...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...
The overall aim of visualization is to obtain insight into large amounts of data. Detection of patte...