2D Scatterplots - Advanced Tab

Graphical Analytic Techniques

The Advanced tab of the 2D Scatterplots Startup Panel contains a variety of options for creating 2D scatterplots.

Variables
Click the Variables button to display a standard variable selection dialog box, in which you select the variable(s) to be plotted. When you select more than one variable for one of the univariate graphs types (i.e., Regular, Frequency, or Voronoi), a sequence of graphs is produced (one for each of the variables). The selection that you make will then be displayed in the area of the dialog box below the Variables button. If you select marked subsets, the method of categorization selected will apply to all scatterplots.
Graph type
From this list, select the type of 2D scatterplot to be plotted. Click the type of the plot link listed below for a brief description of that type of graph.
Regular Bubble
Multiple Quantile
Double-Y Voronoi
Frequency  
Fit
You can fit an equation to the points in the line plots by selecting one of the predefined functions from this list.
Linear Negative Exponential Weighted
Polynomial Spline
Logarithmic Lowess
Exponential Orthogonal
Distance Weighted Least Squares  
Statistics
You can include a variety of statistics as footnotes in the graph by selecting one or more of the check boxes in the Statistics group box.
R square (linear fit)
Select this check box to include the R-square for the plotted variables.
Corr. and p (linear fit).
Select this check box to include the correlation for the plotted variables and its corresponding p-value.
Regression (fit) equation
Select this check box to include the regression equation in the plot.
Ellipse
Use the options in the Ellipse group box to superimpose an ellipse on the data in the scatterplot. You can display one of two types of ellipses (Normal or Range, see below) or select Off.
Normal
Select this option button to produce an ellipse based on the assumption that the two variables follow the bivariate normal distribution. The orientation of the ellipse is determined by the sign of the linear correlation between the two variables (the longer axis of the ellipse is superimposed on the regression line). The ellipse shows the prediction interval for a single new observation, given the parameter estimates for the bivariate distribution computed from the data, and the given N. Note that if the number of observations in the scatterplot is small, the prediction interval may be very large, exceeding the area shown in the graph for the default scaling of the axes. Thus, in some cases (with small N) you may not see the prediction interval ellipse on the default graph (change the scaling to show larger intervals for the two variables in the plot). For additional information see, for example, Tracy, Young, and Mason (1992), or Montgomery 1996; see also the description of the prediction interval ellipse.
Range
Select this option button to produce a fixed size ellipse such that the length of its horizontal and vertical projection onto the x- and y-axes (respectively) is equal to the mean ± (Range * I)/2 where the mean and range refer to the X or Y variable, and I is the current value of the coefficient field.

coefficient. In this box, specify the coefficient that controls the ellipses selected.

Regression bands. Use the options in the Regression bands group box (applicable when Linear or Polynomial is selected as the Fit) to display Confidence or Prediction bands around the fitted (regression) line. You can enter the probability value (level), which represents the probability that the "true" fitted line (in the population) falls between the bands. The standard error for the fitted line (which represents the predicted values, given the respective linear or polynomial fit) is computed based on the polynomial regression model (it is assumed that the data and their polynomial transformations are normally distributed, e.g., see Neter, Wasserman, & Kutner, 1985, p. 246).

Mark Selected Subsets
Click this button to display the Specify Multiple Subsets dialog box, in which you can specify selection conditions that will subset (i.e., categorize) the cases in one plot. Note that this option is disabled for the Quantile graph type because this type of scatterplot is incompatible with case-related information. For more information about this option, see Mark Selected Subsets.