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Balanced augmented empirical likelihood for regression models
Authors:Xiaochao Xia  Zhi Liu
Institution:1. College of Science, Huazhong Agricultural University, Wuhan, China;2. Department of Mathematics, University of Macau, Macau
Abstract:This paper studies the problem of convex hull constraint in conventional empirical likelihood. Specifically, in the framework of regression, a balanced augmented empirical likelihood (BAEL) procedure through adding two synthetic data points is proposed. It can be used to resolve the under-coverage issue, especially in small-sample or high-dimension setting. Furthermore, some asymptotic properties for proposed BAEL ratio statistic are established under mild conditions. The proposed approach performs robust to different random errors by choosing a robust loss function. Extensive simulation studies and a real example are carried out to support our results.
Keywords:Corresponding author    primary  62N01  secondary  62N02  Empirical likelihood  Balanced augmented sample  Convex hull constraint  Regression models  Asymptotic properties
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