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Regression diagnostics / John Fox.

By: Material type: TextTextSeries: Quantitative applications in the social sciences ; no. 07-079.Publication details: Newbury Park, Calif. : Sage Publications, 1991Description: 92 p. : ill. ; 22 cmISBN:
  • 080393971X
Subject(s): DDC classification:
  • 519.5/36 20
LOC classification:
  • QA278.2 .F63 1991
Contents:
Linear Least-Squares Regression -- The Regression Model -- Least-Squares Estimation -- Statistical Inference for Regression Coefficients -- The General Linear Model -- Collinearity -- Collinearity and Variance Inflation -- Coping with Collinearity: No Quick Fix -- Outlying and Influential Data -- Measuring Leverage: Hat-Values -- Detecting Outliers: Studentized Residuals -- Measuring Influence: Cook's Distance and Other Diagnostics -- Numerical Cutoffs for Diagnostic Statistics -- Jointly Influential Subsets of Observations: Partial-Regression Plots -- Should Unusual Data Be Discarded? -- Non-Normally Distributed Errors -- Normal Quantile-Comparison Plot of Residuals -- Histograms of Residuals -- Correcting Asymmetry by Transformation -- Nonconstant Error Variance -- Detecting Nonconstant Error Variance -- Correcting Nonconstant Error Variance -- Nonlinearity -- Residual and Partial-Residual Plots -- Transformations for Linearity -- Discrete Data -- Testing for Nonlinearity -- Testing for Nonconstant Error Variance -- Maximum-Likelihood Methods, Score Tests, and Constructed Variables -- Box-Cox Transformation of y -- Box-Tidwell Transformation of the xs -- Nonconstant Error Variance Revisited -- Recommendations -- Computing Diagnostics -- Least-Squares Fit, Joint Confidence Regions, and Tests -- Ridge Regression -- Hat-Values and the Hat Matrix -- The Distribution of the Least-Squares Residuals -- Deletion Diagnostics -- The Partial-Regression Plot -- Smoothing Scatterplots by Lowess -- Weighted-Least-Squares Estimation -- Correcting Least-Squares Standard Errors for Heteroscedasticity -- The Efficiency and Validity of Least-Squares Estimation When Error Variances Are Not Constant.
Item type: Book
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Current library Call number Status Barcode
MARY IMMACULATE LIBRARY Open Shelf QA278.2 .F63 1991 (Browse shelf(Opens below)) Available 63930

Includes bibliographical references (p. 89-92).

Linear Least-Squares Regression -- The Regression Model -- Least-Squares Estimation -- Statistical Inference for Regression Coefficients -- The General Linear Model -- Collinearity -- Collinearity and Variance Inflation -- Coping with Collinearity: No Quick Fix -- Outlying and Influential Data -- Measuring Leverage: Hat-Values -- Detecting Outliers: Studentized Residuals -- Measuring Influence: Cook's Distance and Other Diagnostics -- Numerical Cutoffs for Diagnostic Statistics -- Jointly Influential Subsets of Observations: Partial-Regression Plots -- Should Unusual Data Be Discarded? -- Non-Normally Distributed Errors -- Normal Quantile-Comparison Plot of Residuals -- Histograms of Residuals -- Correcting Asymmetry by Transformation -- Nonconstant Error Variance -- Detecting Nonconstant Error Variance -- Correcting Nonconstant Error Variance -- Nonlinearity -- Residual and Partial-Residual Plots -- Transformations for Linearity -- Discrete Data -- Testing for Nonlinearity -- Testing for Nonconstant Error Variance -- Maximum-Likelihood Methods, Score Tests, and Constructed Variables -- Box-Cox Transformation of y -- Box-Tidwell Transformation of the xs -- Nonconstant Error Variance Revisited -- Recommendations -- Computing Diagnostics -- Least-Squares Fit, Joint Confidence Regions, and Tests -- Ridge Regression -- Hat-Values and the Hat Matrix -- The Distribution of the Least-Squares Residuals -- Deletion Diagnostics -- The Partial-Regression Plot -- Smoothing Scatterplots by Lowess -- Weighted-Least-Squares Estimation -- Correcting Least-Squares Standard Errors for Heteroscedasticity -- The Efficiency and Validity of Least-Squares Estimation When Error Variances Are Not Constant.

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