Effect of Violation of the Normal Assumption on MI and ML Estimators in the Analysis of Incomplete Data |
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Authors: | Shintaro Hojo Yutaka Kano |
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Institution: | 1. Networking Technology Section R&2. D Department, TOA Corporation, Osaka, Japan;3. Graduate School of Engineering Science, Division of Mathematical Science, Osaka University, Osaka, Japan |
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Abstract: | Asymptotic distributions of normal-theory-based ML/MI estimators are studied in a simple regression model under general distributions with MAR missing data. The asymptotic variance of the ML/MI estimator of residuals’ variance is explicitly derived, from which it follows that the kurtosis of the error distribution primarily affects the asymptotic variance. Results of numerical simulations conducted to study finite sample properties of the estimators, conformed largely to the asymptotic results, and they also indicated interesting findings particularly for small samples, which do not follow from the asymptotic property. It is concluded that the ML estimators perform best in the situation studied here. |
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Keywords: | Incomplete data Maximum likelihood Multiple imputation Distribution misspecification |
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