Asymptotics of Subsampling for Generalized Linear Regression Models under Unbounded Design

Author:

Teng Guangqiang,Tian Boping,Zhang YuanyuanORCID,Fu Sheng

Abstract

The optimal subsampling is an statistical methodology for generalized linear models (GLMs) to make inference quickly about parameter estimation in massive data regression. Existing literature only considers bounded covariates. In this paper, the asymptotic normality of the subsampling M-estimator based on the Fisher information matrix is obtained. Then, we study the asymptotic properties of subsampling estimators of unbounded GLMs with nonnatural links, including conditional asymptotic properties and unconditional asymptotic properties.

Funder

Key University Science Research Project of Jiangsu Province

Publisher

MDPI AG

Subject

General Physics and Astronomy

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