Model Building: Plotting Eigenvalues: Difference between revisions

From Eigenvector Research Documentation Wiki
Jump to navigation Jump to search
imported>Jeremy
No edit summary
imported>Jeremy
No edit summary
Line 8: Line 8:
{|  
{|  


|-
|- valign="top"


|
|
Line 17: Line 17:
{|  
{|  


|-
|- valign="top"


|
|
Line 26: Line 26:
{|  
{|  


|-
|- valign="top"


|
|
Line 35: Line 35:
{|  
{|  


|-
|- valign="top"


|
|
Line 44: Line 44:
{|  
{|  


|-
|- valign="top"


|
|
Line 53: Line 53:
{|  
{|  


|-
|- valign="top"


|
|
Line 62: Line 62:
{|  
{|  


|-
|- valign="top"


|
|
Line 71: Line 71:
[[ModelBuilding_PlottingEigenValues#Figure 15-1 on page 90|Figure 15-1 on page 90]]The first figure below shows the plot of eigenvalues as a function of the number of principal components retained in the model for a PCA analysis in which twenty variables were measured and three principal components were retained. The second figure below shows the plot of the cumulative variance captured as a function of the number of principal components retained in the model for a PCA analysis in which twenty variables were measured and three principal components were retained.
[[ModelBuilding_PlottingEigenValues#Figure 15-1 on page 90|Figure 15-1 on page 90]]The first figure below shows the plot of eigenvalues as a function of the number of principal components retained in the model for a PCA analysis in which twenty variables were measured and three principal components were retained. The second figure below shows the plot of the cumulative variance captured as a function of the number of principal components retained in the model for a PCA analysis in which twenty variables were measured and three principal components were retained.


::''Plot of eigenvalues as a function of the number of principal components retained in the model for a PCA analysis''
:''Plot of eigenvalues as a function of the number of principal components retained in the model for a PCA analysis''


::[[Image:ModelBuilding_PlottingEigenValues.24.1.2.jpg|571x302px]]
::[[Image:ModelBuilding_PlottingEigenValues.24.1.2.jpg|571x302px]]
Line 81: Line 81:
Note: For information about the Plot Controls window and Plot window, see [[PlotControlsWindow_Layout|Plot Controls Window]].
Note: For information about the Plot Controls window and Plot window, see [[PlotControlsWindow_Layout|Plot Controls Window]].


::''Plot of the cumulative variance captured as a function of the number of principal components retained in the model for a PCA analysis''
:''Plot of the cumulative variance captured as a function of the number of principal components retained in the model for a PCA analysis''


::[[Image:ModelBuilding_PlottingEigenValues.24.1.3.jpg|591x315px]]
::[[Image:ModelBuilding_PlottingEigenValues.24.1.3.jpg|591x315px]]
Line 90: Line 90:
You can select multiple Y metrics in the Plot Controls window to overlay these metrics in the Eigenvalues plot. For example, you can CTRL-click Eigenvalues and Cumulative Variance Captured (%) to overlay these values in the Eigenvalues plot.
You can select multiple Y metrics in the Plot Controls window to overlay these metrics in the Eigenvalues plot. For example, you can CTRL-click Eigenvalues and Cumulative Variance Captured (%) to overlay these values in the Eigenvalues plot.


::''Example of Eigenvalues plot with different plot options''
:''Example of Eigenvalues plot with different plot options''


::[[Image:ModelBuilding_PlottingEigenValues.24.1.4.jpg|522x297px]]
::[[Image:ModelBuilding_PlottingEigenValues.24.1.4.jpg|522x297px]]

Revision as of 12:09, 29 July 2010

Table of Contents | Previous | Next

Plotting Eigenvalues for a Calibration Model

For most analysis methods, the Analysis window toolbar contains a Plot Eigenvalues button Plot Eigenvalues icon.png.You use the Plot Eigenvalues option to plot a series of univariate metrics as a function of the number of principal components or factors retained in the model. These values assist you in determining the number of principal components or factors to retain the model and often include the following:

  • Eigenvalues.
  • Variance Captured (%)-The amount of variance captured for each principal component or factor.
  • Cumulative Variance Captured (%)-The Cumulative Variance Captured (%) value tracks to the % Variance Cumulative column (the last column) in the Variance Captured data table in the Control pane. This plot shows that with an increasing number of principal components or factors, the cumulative variance asymptotically approaches 100%.
  • The natural log of the eigenvalues.
  • The log of the eigenvalues.
  • The ratio of the eigenvalues.
  • The results from any cross-validation that was carried out.

Figure 15-1 on page 90The first figure below shows the plot of eigenvalues as a function of the number of principal components retained in the model for a PCA analysis in which twenty variables were measured and three principal components were retained. The second figure below shows the plot of the cumulative variance captured as a function of the number of principal components retained in the model for a PCA analysis in which twenty variables were measured and three principal components were retained.

Plot of eigenvalues as a function of the number of principal components retained in the model for a PCA analysis
ModelBuilding PlottingEigenValues.24.1.2.jpg

Note: For information about the Plot Controls window and Plot window, see Plot Controls Window.

Plot of the cumulative variance captured as a function of the number of principal components retained in the model for a PCA analysis
ModelBuilding PlottingEigenValues.24.1.3.jpg

Eigenvalues plot options

You can select multiple Y metrics in the Plot Controls window to overlay these metrics in the Eigenvalues plot. For example, you can CTRL-click Eigenvalues and Cumulative Variance Captured (%) to overlay these values in the Eigenvalues plot.

Example of Eigenvalues plot with different plot options
ModelBuilding PlottingEigenValues.24.1.4.jpg