The Prediction Sum of Squares as a General Measure for Regression Diagnostics |
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Authors: | Nguyen T. Quan |
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Affiliation: | National Economic Research Associates, Inc. , Washington , DC , 20036 |
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Abstract: | Statistics that usually accompany the regression model do not provide insight into the quality of the data or the potential influence of the individual observations on the estimates. In this study, the Q2 statistic is used as a criterion for detecting influential observations or outliers. The statistic is derived from the jackknifed residuals, the squared sum of which is generally known as the prediction sum of squares or PRESS. This article compares R 2 with Q2 and suggests that the latter be used as part of the data-quality check. It is shown, for two separate data sets obtained from regional cost of living and U.S. food industry studies, that in the presence of outliers the Q2 statistic can be negative, because it is sensitive to the choice of regressors and the inclusion of influential observations. Once the outliers are dropped from the sample, the discrepancy between Q2 and R 2 values is negligible. |
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Keywords: | Jackknife residual Proportional reduction of error Q2 R 2 |
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