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The Coefficient tab enables you to view GLM coefficients. The viewer supports sorting to control the order in which coefficients are displayed and filtering to select the coefficients to display.
By default, coefficients are sorted by absolute value. You can deselect or select Sort by absolute value and click Query.
The default fetch size is 1,000 records. To change the fetch size, specify a new number of records and click Query.
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Note: After you change any criteria on this tab, click Query to query the database. You must click Query even for changes such as selecting or deselecting sort by absolute value or changing the fetch size. |
Sort and Search GLMC Coefficients describes sorting and searching the grid.
The relative value of coefficients is shown graphically as a bar, with different colors for positive and negative values. If a coefficient is close to 0, then the bar may be too small to display.
Sort by absolute value: Sort the list of coefficients by absolute value.
Fetch Size: The number of rows displayed. To figure out if all coefficients are displayed, choose a fetch size that is greater than the number of rows displayed.
Coefficients are listed in a grid. If no items are listed, then there are no coefficients for that target value. The coefficients grid has these columns:
Attribute: Name of the attribute
Value: Value of the attribute
Coefficient: The linear coefficient estimate for the selected target value is displayed. A bar is shown in front of (and possible overlapping) each coefficient. The bar indicates the relative size of the coefficient. For positive values, the bar is light blue; for negative values, the bar is red. (If a value is close to 0, then the bar may be too small to be displayed.)
Standard Error of the estimate
Wald Chi Squared
Pr > Chi Square
Upper coefficient limit
Lower coefficient limit
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Note: Not all statistics are necessarily returned for each coefficient. |
Statistics are null if any of the following are true:
The statistic does not apply to the mining function. For example, exp_coefficient does not apply to Linear Regression.
The statistic cannot be calculated because of limitations in the system resources.
The value of the statistics is infinity.
If the model was built using Ridge Regression, or if the covariance matrix is found to be singular during the build, then coefficient bounds (upper and lower) have the value NULL.
Other Tabs: The viewer has these other tabs: