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Model Fitting: Generalized Linear Models

Plots Tab

You can use the Plots tab to create plots that graphically display results of the analysis. (See Figure 24.23.) There are plots that help you to visualize the fit, the residuals, and various influence diagnostics.

Creating a plot often adds one or more variables to the data table. For a multinomial response, residuals and influence diagnostics are not available, so the only possible plot for multinomial data is the predicted response plot.

The following plots are available:

Observed vs. Predicted


creates a scatter plot of the Y variables versus the predicted values, overlaid with the diagonal line that represents a perfect fit.

Predicted response plot


creates a line plot of the predicted probability versus the continuous explanatory variable. This plot is created only if the following conditions are satisfied:

  • There is exactly one continuous explanatory variable.

  • There are three or fewer classification variables.

  • There are 12 or fewer joint levels of the classification variables.

If the response distribution is multinomial, there are plots, where is the number of response levels.

Pearson chi-square residuals vs. Predicted


creates a scatter plot of the residuals versus the predicted probabilities.

Deviance residuals vs. Predicted


creates a scatter plot of the deviance residuals versus the predicted probabilities.

Likelihood residuals vs. Predicted


creates a scatter plot of the likelihood residuals versus the predicted probabilities.

Cook’s D vs. Observation number


creates a scatter plot of Cook’s statistic for each observation.

Leverage (H) vs. Observation number


creates a scatter plot of the leverage statistic for each observation.

Figure 24.23 The Plots Tab
The Plots Tab

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