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Penalized Maximum Likelihood Logistic Regression
Joseph Coveney Cobridge Co., Ltd.
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Topics Separation in Logistic Regression Approaches to Separation
Firth’s Bias-reduced GLMs firthlogit: syntax and examples Caveats and to-do’s
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Separation in Logistic Regression
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Complete Separation Dataset adapted from D. W. Hosmer and S. Lemeshow, Applied Logistic Regression Second Edition. (New York: John Wiley & Sons, 2000), pp. 138–39.
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Quasi-complete Separation
Dataset adapted from D. W. Hosmer and S. Lemeshow, Applied Logistic Regression Second Edition. (New York: John Wiley & Sons, 2000), pp. 138–39.
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Approaches to Separation
Remove predictors Pool groups Remove interaction terms Gather more data Use alternatives
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Exact Logistic Regression
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But . . . Dataset from D. M. Potter A permutation test for inference in logistic regression with small- and moderate-sized data sets. Statistics in Medicine 24:693–708.
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[19] D. Firth. 1993. Bias reduction in maximum likelihood estimates
[19] D. Firth Bias reduction in maximum likelihood estimates. Biometrika 80:27–38.
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firthlogit
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But redux
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But redux, continued
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Profile Likelihood Ratio CIs
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Caveats Profile Penalized Likelihood CIs Small-sample Behavior
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G. Heinze and M. Ploner, A SAS macro, S-PLUS library and R package to perform logistic regression without convergence problems. Technical Report 2/2004. Medical University of Vienna. p. 36.
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To-do’s Profile Penalized Likelihood CIs Modify ml d0
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