Plot main effects of predictors in linear regression model
plotEffects(
creates an effects plot
of the predictors in the linear regression model mdl
)mdl
. An
effects plot shows the estimated main effect on the
response from changing each predictor value, averaging out the effects of the other
predictors. A horizontal line through an effect value indicates the 95% confidence
interval for the effect value.
returns line objects. Use h
= plotEffects(mdl
)h
to modify the properties of a
specific line after you create the plot. For a list of properties, see Line Properties.
The data cursor displays the values of the selected plot point in a data tip (small text box located next to the data point). The data tip includes the x-axis and y-axis values for the selected point. Use the x-axis values to view an estimated effect value and its confidence bounds.
A LinearModel
object provides multiple plotting functions.
When creating a model, use plotAdded
to understand the effect of adding or removing a predictor
variable.
When verifying a model, use plotDiagnostics
to find questionable data and to understand the
effect of each observation. Also, use plotResiduals
to analyze the residuals of the model.
After fitting a model, use plotAdjustedResponse
, plotPartialDependence
, and plotEffects
to understand the effect of a particular predictor. Use
plotInteraction
to understand the
interaction effect between two predictors. Also, use plotSlice
to plot slices through the prediction surface.
CompactLinearModel
| LinearModel
| plotAdjustedResponse
| plotInteraction