Location-adjusted Wald statistics for scalar parameters
C. Di Caterina, I. Kosmidis

TL;DR
This paper introduces a novel algebraic adjustment to the Wald statistic that improves inference accuracy for scalar parameters, especially in small to moderate samples, with minimal additional computational effort.
Contribution
The paper proposes a new location adjustment to the Wald statistic that enhances its finite-sample performance across various models using readily available information.
Findings
Significant improvements in inference accuracy demonstrated in simulations.
Effective application to logistic, beta, and gamma regressions.
Useful for constructing significance maps in MRI analysis.
Abstract
Inference about a scalar parameter of interest is a core statistical task that has attracted immense research in statistics. The Wald statistic is a prime candidate for the task, on the grounds of the asymptotic validity of the standard normal approximation to its finite-sample distribution, simplicity and low computational cost. It is well known, though, that this normal approximation can be inadequate, especially when the sample size is small or moderate relative to the number of parameters. A novel, algebraic adjustment to the Wald statistic is proposed, delivering significant improvements in inferential performance with only small implementation and computational overhead, predominantly due to additional matrix multiplications. The Wald statistic is viewed as an estimate of a transformation of the model parameters and is appropriately adjusted, using either maximum likelihood or…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Statistical Methods and Inference · Soil Geostatistics and Mapping
