The PRINQUAL Procedure

Understanding How PROC PRINQUAL Works

In the following example, PROC PRINQUAL uses the MTV method to linearize a curved scatter plot. Let

$\displaystyle  \textrm{X}_1  $
$\displaystyle  =  $
$\displaystyle  -1\;  \textrm{to} \; 1\;  \textrm{by} \; 0.02  $
$\displaystyle \textrm{X}_2  $
$\displaystyle  =  $
$\displaystyle  \textrm{X}_1^3 + \epsilon  $
$\displaystyle \textrm{X}_3  $
$\displaystyle  =  $
$\displaystyle  \textrm{X}_2^5 + \epsilon  $

where $\epsilon $ is normal error.

These three variables define a curved swarm of points in three-dimensional space. First, the SGSCATTER procedure is used to display two-dimensional views of these data. Next, PROC PRINQUAL is used to straighten the scatter plot, making it more one-dimensional by finding a smooth transformation of each variable. The N=1 option in the PROC PRINQUAL statement requests one principal component. The TRANSFORM statement requests a cubic spline transformation with nine knots. Splines are curves, which are usually required to be continuous and smooth. See the section Splines for more information about splines. See Smith (1979) for an excellent introduction to splines.

PROC PRINQUAL transforms each variable to be as much as possible like the first principal component (or more generally, to be close to the space defined by the first N= principal components). One component accounts for 92 percent of the variance of the untransformed data and over 99 percent of the variance of the transformed data (see Figure 74.5). Note that the results did not converge in the default 50 iterations, so more iterations were requested using the MAXITER= option. The transformations are requested by specifying PLOTS=TRANSFORMATION and are displayed in Figure 74.6.

PROC PRINQUAL creates an output data set that contains both the original and transformed variables. The original variables are named X1, X2, and X3, and the transformed variables are named TX1, TX2, and TX3. The transformed variables are displayed using the SGSCATTER procedure in Figure 74.7.

The following statements produce Figure 74.4 through Figure 74.7:

ods graphics on;

* Generate Three-Dimensional Data;
data X;
   do X1 = -1 to 1 by 0.02;
      X2 = X1 ** 3 + 0.05 * normal(7);
      X3 = X1 ** 5 + 0.05 * normal(7);
      output;
   end;
run;

proc sgscatter data=x;
   plot x1*x2 x1*x3 x3*x2;
run;

* Try to Straighten the Scatter Plot;
proc prinqual data=X n=1 maxiter=2000 plots=transformation out=results;
   title 'Linearize the Scatter Plot';
   transform spline(X1-X3 / nknots=9);
run;


* Plot the Linearized Scatter Plot;
proc sgscatter data=results;
   plot tx1*tx2 tx1*tx3 tx3*tx2;
run;

The three-dimensional data in Figure 74.4 and Figure 74.7 are displayed in three two-dimensional plots, arrayed as if they were three faces of a cube that was flattened as you might flatten a box.

Figure 74.4: Three-Dimensional Scatter Plot

Three-Dimensional Scatter Plot


Figure 74.5: PRINQUAL Iteration History

Linearize the Scatter Plot
 
The PRINQUAL Procedure
 
PRINQUAL MTV Algorithm Iteration History
 

Iteration
Number
Average
Change
Maximum
Change
Proportion
of Variance
Criterion
Change
Note
1 0.15125 0.93453 0.92376    
2 0.04589 0.14682 0.98030 0.05653  
3 0.03154 0.10125 0.98626 0.00596  
4 0.02258 0.06890 0.98890 0.00265  
5 0.01682 0.04777 0.99028 0.00137  
6 0.01297 0.03782 0.99106 0.00078  
7 0.01032 0.03029 0.99154 0.00048  
.          
.          
.          
1670 0.00001 0.00005 0.99371 0.00000  
1671 0.00001 0.00005 0.99371 0.00000  
1672 0.00001 0.00005 0.99371 0.00000 Converged



       Algorithm converged.                                                     


Figure 74.6: Transformations

Transformations


Figure 74.7: Linearized Scatter Plot

Linearized Scatter Plot