Predictor effect displays, introduced in this article, visualize the response surface of complex regression models by averaging and conditioning, producing a sequence of 2D line graphs, one graph or set of graphs for each predictor in the regression problem. Partial residual plots visualize lack of fit, traditionally in relatively simple additive regression models. We combine partial residuals with effect displays to visualize both fit and lack of fit simultaneously in complex regression models, plotting residuals from a model around 2D slices of the fitted response surface. Employing fundamental results on partial residual plots along with examples for both real and contrived data, we discuss and illustrate both the strengths and limitatio...
We assume that the data follow y = X(beta) + f(z) + (epsilon) where E((epsilon)) = 0, cov((epsilon))...
We assume that the data follow y = X(beta) + f(z) + (epsilon) where E((epsilon)) = 0, cov((epsilon))...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
Predictor effect displays, introduced in this article, visualize the response surface of complex reg...
Advantages of partial residual plots over residual plots in regression analysis are discussed and il...
Partial residual plots are a useful diagnostic tool in multiple regression to clarify the effect of ...
This article presents Individual Conditional Expectation (ICE) plots, a tool for vi-sualizing the mo...
<p>(A)–(C) show accuracy residuals after controlling for all other fixed and random effects plotted ...
<p>In all panels, the upper insets show the best (left) and worst (right) regression results. The ve...
<p>The results for model A (A) and for model B (B) are shown. The residuals of model A show a clear ...
Residuals of fitting models: Comparison using Q-Q plots (left) and real vs. residual (right) for dif...
Regression models allow one to isolate the relationship between the outcome and an explanatory varia...
This paper describes the implementation in R of a method for tabular or graphical display of terms i...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
<div><p>This article presents individual conditional expectation (ICE) plots, a tool for visualizing...
We assume that the data follow y = X(beta) + f(z) + (epsilon) where E((epsilon)) = 0, cov((epsilon))...
We assume that the data follow y = X(beta) + f(z) + (epsilon) where E((epsilon)) = 0, cov((epsilon))...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
Predictor effect displays, introduced in this article, visualize the response surface of complex reg...
Advantages of partial residual plots over residual plots in regression analysis are discussed and il...
Partial residual plots are a useful diagnostic tool in multiple regression to clarify the effect of ...
This article presents Individual Conditional Expectation (ICE) plots, a tool for vi-sualizing the mo...
<p>(A)–(C) show accuracy residuals after controlling for all other fixed and random effects plotted ...
<p>In all panels, the upper insets show the best (left) and worst (right) regression results. The ve...
<p>The results for model A (A) and for model B (B) are shown. The residuals of model A show a clear ...
Residuals of fitting models: Comparison using Q-Q plots (left) and real vs. residual (right) for dif...
Regression models allow one to isolate the relationship between the outcome and an explanatory varia...
This paper describes the implementation in R of a method for tabular or graphical display of terms i...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...
<div><p>This article presents individual conditional expectation (ICE) plots, a tool for visualizing...
We assume that the data follow y = X(beta) + f(z) + (epsilon) where E((epsilon)) = 0, cov((epsilon))...
We assume that the data follow y = X(beta) + f(z) + (epsilon) where E((epsilon)) = 0, cov((epsilon))...
Variable importance, interaction measures, and partial dependence plots are important summaries in t...