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Scatter plot of residuals on the y axis and fitted values on the x axis to detect non-linearity, unequal error variances, and outliers.
ols_plot_resid_fit(model, print_plot = TRUE)
An object of class lm.
lm
logical; if TRUE, prints the plot else returns a plot object.
TRUE
Characteristics of a well behaved residual vs fitted plot:
The residuals spread randomly around the 0 line indicating that the relationship is linear.
The residuals form an approximate horizontal band around the 0 line indicating homogeneity of error variance.
No one residual is visibly away from the random pattern of the residuals indicating that there are no outliers.
Other residual diagnostics: ols_plot_resid_box(), ols_plot_resid_hist(), ols_plot_resid_qq(), ols_test_correlation(), ols_test_normality()
ols_plot_resid_box()
ols_plot_resid_hist()
ols_plot_resid_qq()
ols_test_correlation()
ols_test_normality()
model <- lm(mpg ~ disp + hp + wt, data = mtcars) ols_plot_resid_fit(model)
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