General and Feasible Tests with Multiply-Imputed Datasets

12/30/2021
by   Kin Wai Chan, et al.
0

Multiple imputation (MI) is a technique especially designed for handling missing data in public-use datasets. It allows analysts to perform incomplete-data inference straightforwardly by using several already imputed datasets released by the dataset owners. However, the existing MI tests require either a restrictive assumption on the missing-data mechanism, known as equal odds of missing information (EOMI), or an infinite number of imputations. Some of them also require analysts to have access to restrictive or non-standard computer subroutines. Besides, the existing MI testing procedures cover only Wald's tests and likelihood ratio tests but not Rao's score tests, therefore, these MI testing procedures are not general enough. In addition, the MI Wald's tests and MI likelihood ratio tests are not procedurally identical, so analysts need to resort to distinct algorithms for implementation. In this paper, we propose a general MI procedure, called stacked multiple imputation (SMI), for performing Wald's tests, likelihood ratio tests and Rao's score tests by a unified algorithm. SMI requires neither EOMI nor an infinite number of imputations. It is particularly feasible for analysts as they just need to use a complete-data testing device for performing the corresponding incomplete-data test.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/23/2017

Multiple Improvements of Multiple Imputation Likelihood Ratio Tests

Multiple imputation (MI) inference handles missing data by first properl...
research
05/27/2021

Score test for missing at random or not

Missing data are frequently encountered in various disciplines and can b...
research
11/22/2019

Bootstrap Inference for Multiple Imputation under Uncongeniality and Misspecification

Multiple imputation has become one of the most popular approaches for ha...
research
07/25/2018

Propensity score estimation using classification and regression trees in the presence of missing covariate data

Data mining and machine learning techniques such as classification and r...
research
03/20/2019

Approximate Information Tests on Statistical Submanifolds

Parametric inference posits a statistical model that is a specified fami...
research
05/18/2018

Processing of missing data by neural networks

We propose a general, theoretically justified mechanism for processing m...
research
08/19/2020

Kernelized Stein Discrepancy Tests of Goodness-of-fit for Time-to-Event Data

Survival Analysis and Reliability Theory are concerned with the analysis...

Please sign up or login with your details

Forgot password? Click here to reset