MinP Score Tests with an Inequality Constrained Parameter Space
Giuseppe Cavaliere, Zeng-Hua Lu, Anders Rahbek, Yuhong Yang

TL;DR
This paper introduces a new class of one-sided score tests for parameters under inequality constraints, allowing for simultaneous testing of individual elements and improving upon existing joint testing methods.
Contribution
It proposes a novel MinP score test framework based on the minimum of multiple p-values, enabling more detailed inference under inequality constraints.
Findings
Tests outperform existing methods in joint testing scenarios.
The proposed tests effectively identify individual parameter elements.
Simulation results confirm good finite sample performance.
Abstract
Score tests have the advantage of requiring estimation alone of the model restricted by the null hypothesis, which often is much simpler than models defined under the alternative hypothesis. This is typically so when the alternative hypothesis involves inequality constraints. However, existing score tests address only jointly testing all parameters of interest; a leading example is testing all ARCH parameters or variances of random coefficients being zero or not. In such testing problems rejection of the null hypothesis does not provide evidence on rejection of specific elements of parameter of interest. This paper proposes a class of one-sided score tests for testing a model parameter that is subject to inequality constraints. Proposed tests are constructed based on the minimum of a set of -values. The minimand includes the -values for testing individual elements of parameter of…
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Taxonomy
TopicsStatistical Methods and Inference · Advanced Statistical Methods and Models · Statistical Methods and Bayesian Inference
MethodsAnimatable Reconstruction of Clothed Humans · Linear Regression
