A Hybrid EM Algorithm for Linear Two-Way Interactions with Missing Data

11/13/2021
by   Dale S. Kim, et al.
0

We study an EM algorithm for estimating product-term regression models with missing data. The study of such problems in the likelihood tradition has thus far been restricted to an EM algorithm method using full numerical integration. However, under most missing data patterns, we show that this problem can be solved analytically, and numerical approximations are only needed under specific conditions. Thus we propose a hybrid EM algorithm, which uses analytic solutions when available and approximate solutions only when needed. The theoretical framework of our algorithm is described herein, along with two numerical experiments using both simulated and real data. We show that our algorithm confers higher accuracy to the estimation process, relative to the existing full numerical integration method. We conclude with a discussion of applications, extensions, and topics of further research.

READ FULL TEXT
research
03/24/2021

Envelope Methods with Ignorable Missing Data

Envelope method was recently proposed as a method to reduce the dimensio...
research
03/27/2023

A joint Bayesian framework for missing data and measurement error using integrated nested Laplace approximations

Measurement error (ME) and missing values in covariates are often unavoi...
research
11/21/2017

On the EM-Tau algorithm: a new EM-style algorithm with partial E-steps

The EM algorithm is one of many important tools in the field of statisti...
research
11/21/2018

On an Extension of Stochastic Approximation EM Algorithm for Incomplete Data Problems

The Stochastic Approximation EM (SAEM) algorithm, a variant stochastic a...
research
09/22/2020

Finite mixture modeling of censored and missing data using the multivariate skew-normal distribution

Finite mixture models have been widely used to model and analyze data fr...
research
09/05/2019

Estimation and inference in metabolomics with non-random missing data and latent factors

High throughput metabolomics data are fraught with both non-ignorable mi...
research
12/24/2017

Efficient data augmentation techniques for Gaussian state space models

We propose a data augmentation scheme for improving the rate of converge...

Please sign up or login with your details

Forgot password? Click here to reset