【統計系演講】Interval Estimation under Multiple Imputation: From Binary to Multinomial Data
日期 :
2026-04-28
單位 :
統計系
國立政治大學統計學系 學術演講
主講人:李宗翰助理教授(成功大學統計學系)
題 目:Interval Estimation under Multiple Imputation: From Binary to Multinomial Data
時 間:民國115年5月4日 (星期一) 下午1:30
地 點:國立政治大學逸仙樓050101教室
摘 要:
Missing data are common in medical studies, public health surveys, and social science research, and can substantially affect statistical inference. Multiple imputation is a widely used approach for handling incomplete data; however, constructing accurate confidence intervals under multiple imputation remains challenging, particularly for discrete data. This talk presents two recent methodological developments. In the first part, we study confidence interval construction for the means of discrete distributions, including binomial and Poisson models, in the presence of missing data. We propose modified multiple imputation confidence intervals that achieve improved coverage probabilities while maintaining shorter interval lengths compared with existing methods. In the second part, we extend the framework to multinomial data by developing simultaneous confidence intervals and confidence regions under multiple imputation. Both Wald and score approaches are considered, together with comparisons under homogeneous and heterogeneous settings. The results show that the proposed methods provide more reliable inference, especially in challenging scenarios such as boundary cases. Simulation studies and real data applications demonstrate the effectiveness of the proposed approaches. Overall, this work provides a unified framework for interval estimation under multiple imputation, bridging binary and general multinomial settings.
主講人:李宗翰助理教授(成功大學統計學系)
題 目:Interval Estimation under Multiple Imputation: From Binary to Multinomial Data
時 間:民國115年5月4日 (星期一) 下午1:30
地 點:國立政治大學逸仙樓050101教室
摘 要:
Missing data are common in medical studies, public health surveys, and social science research, and can substantially affect statistical inference. Multiple imputation is a widely used approach for handling incomplete data; however, constructing accurate confidence intervals under multiple imputation remains challenging, particularly for discrete data. This talk presents two recent methodological developments. In the first part, we study confidence interval construction for the means of discrete distributions, including binomial and Poisson models, in the presence of missing data. We propose modified multiple imputation confidence intervals that achieve improved coverage probabilities while maintaining shorter interval lengths compared with existing methods. In the second part, we extend the framework to multinomial data by developing simultaneous confidence intervals and confidence regions under multiple imputation. Both Wald and score approaches are considered, together with comparisons under homogeneous and heterogeneous settings. The results show that the proposed methods provide more reliable inference, especially in challenging scenarios such as boundary cases. Simulation studies and real data applications demonstrate the effectiveness of the proposed approaches. Overall, this work provides a unified framework for interval estimation under multiple imputation, bridging binary and general multinomial settings.