Applications of the Fractional-Random-Weight Bootstrap

08/24/2018
by   Chris Gotwalt, et al.
0

The bootstrap, based on resampling, has, for several decades, been a widely used method for computing confidence intervals for applications where no exact method is available and when sample sizes are not large enough to be able to rely on easy-to-compute large-sample approximate methods, such a Wald (normal-approximation) confidence intervals. Simulation based bootstrap intervals have been proven useful in that their actual coverage probabilities are close to the nominal confidence level in small samples. Small samples analytical approximations such as the Wald method, however, tend to have coverage probabilities that greatly exceed the nominal confidence level. There are, however, many applications where the resampling bootstrap method cannot be used. These include situations where the data are heavily censored, logistic regression when the success response is a rare event or where there is insufficient mixing of successes and failures across the explanatory variable(s), and designed experiments where the number of parameters is close to the number of observations. The thing that these three situations have in common is that there may be a substantial proportion of the resamples where is not possible to estimate all of the parameters in the model. This paper reviews the fractional-random-weight bootstrap method and demonstrates how it can be used to avoid these problems and construct confidence intervals. For the examples, it is seen that the fractional-random-weight bootstrap method is easy to use and has advantages over the resampling method in many challenging applications.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/26/2022

Confidence Intervals for the Generalisation Error of Random Forests

Out-of-bag error is commonly used as an estimate of generalisation error...
research
05/22/2018

Regression Analysis of Proportion Outcomes with Random Effects

A regression method for proportional, or fractional, data with mixed eff...
research
12/07/2017

Asymptotic coverage probabilities of bootstrap percentile confidence intervals for constrained parameters

The asymptotic behaviour of the commonly used bootstrap percentile confi...
research
02/22/2022

Resampling-free bootstrap inference for quantiles

Bootstrap inference is a powerful tool for obtaining robust inference fo...
research
12/12/2019

Calibrated model-based evidential clustering using bootstrapping

Evidential clustering is an approach to clustering in which cluster-memb...
research
11/02/2019

Correcting for attenuation due to measurement error

I present a frequentist method for quantifying uncertainty when correcti...
research
06/26/2020

Parametric Bootstrap Confidence Intervals for the Multivariate Fay-Herriot Model

The multivariate Fay-Herriot model is quite effective in combining infor...

Please sign up or login with your details

Forgot password? Click here to reset