Novel Non-Negative Variance Estimator for (Modified) Within-Cluster Resampling

11/28/2019
by   Daniel Xu, et al.
0

This article proposes a novel variance estimator for within-cluster resampling (WCR) and modified within-cluster resampling (MWCR) - two existing methods for analyzing longitudinal data. WCR is a simple but computationally intensive method, in which a single observation is randomly sampled from each cluster to form a new dataset. This process is repeated numerous times, and in each resampled dataset (or outputation), we calculate beta using a generalized linear model. The final resulting estimator is an average across estimates from all outputations. MWCR is an extension of WCR that can account for the within-cluster correlation of the dataset; consequently, there are two noteworthy differences: 1) in MWCR, each resampled dataset is formed by randomly sampling multiple observations without replacement from each cluster and 2) generalized estimating equations (GEEs) are used to estimate the parameter of interest. While WCR and MWCR are relatively simple to implement, a key challenge is that the proposed moment-based estimator is often times negative in practice. Our modified variance estimator is not only strictly positive, but simulations show that it preserves the type I error and allows statistical power gains associated with MWCR to be realized.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/05/2021

Zero-modified Count Time Series with Markovian Intensities

This paper proposes a method for analyzing count time series with inflat...
research
12/11/2022

Robust Inference in High Dimensional Linear Model with Cluster Dependence

Cluster standard error (Liang and Zeger, 1986) is widely used by empiric...
research
08/25/2021

Power considerations for generalized estimating equations analyses of four-level cluster randomized trials

In this article, we develop methods for sample size and power calculatio...
research
05/02/2018

Selection of proposal distributions for generalized importance sampling estimators

The standard importance sampling (IS) method uses samples from a single ...
research
04/14/2023

Generalized Automatic Least Squares: Efficiency Gains from Misspecified Heteroscedasticity Models

It is well known that in the presence of heteroscedasticity ordinary lea...
research
10/25/2021

Nonuniform Negative Sampling and Log Odds Correction with Rare Events Data

We investigate the issue of parameter estimation with nonuniform negativ...

Please sign up or login with your details

Forgot password? Click here to reset