A high-dimensional counterpart for the ridge estimator in multicollinear situations
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Date
Authors
Arashi, Mohammad
Norouzirad, Mina
Roozbeh, Mahdi
Khan, Naushad Mamode
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI
Abstract
The ridge regression estimator is a commonly used procedure to deal with multicollinear data. This paper proposes an estimation procedure for high-dimensional multicollinear data that can be alternatively used. This usage gives a continuous estimate, including the ridge estimator as a particular case. We study its asymptotic performance for the growing dimension, i.e., p→∞ when n is fixed. Under some mild regularity conditions, we prove the proposed estimator’s consistency and derive its asymptotic properties. Some Monte Carlo simulation experiments are executed in their performance, and the implementation is considered to analyze a high-dimensional genetic dataset.
Description
Keywords
Asymptotic, High–dimension, Liu estimator, Multicollinear, Ridge estimator
Sustainable Development Goals
Citation
Arashi, M.; Norouzirad, M.;
Roozbeh, M.; Khan, N.M. A High-
Dimensional Counterpart for the
Ridge Estimator in Multicollinear
Situations. Mathematics 2021, 9, 3057.
https://DOI.org/10.3390/math9233057.