Efficient estimation and validation of shrinkage estimators in big data analytics
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Date
Authors
Du Plessis, Salomi
Arashi, Mohammad
Maribe, Gaonyalelwe
Millard, Salomon M.
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI
Abstract
Shrinkage estimators are often used to mitigate the consequences of multicollinearity in
linear regression models. Despite the ease with which these techniques can be applied to small- or
moderate-size datasets, they encounter significant challenges in the big data domain. Some of these
challenges are that the volume of data often exceeds the storage capacity of a single computer and
that the time required to obtain results becomes infeasible due to the computational burden of a
high volume of data. We propose an algorithm for the efficient model estimation and validation of
various well-known shrinkage estimators to be used in scenarios where the volume of the data is
large. Our proposed algorithm utilises sufficient statistics that can be computed and updated at the
row level, thus minimizing access to the entire dataset. A simulation study, as well as an application
on a real-world dataset, illustrates the efficiency of the proposed approach.
Description
DATA AVAILABILITY STATEMENT: Data is available from the authors on request.
Keywords
Big data, Efficient computation, Liu estimator, Matrix of sufficient statistics, Multicollinearity, Ridge estimator, SDG-08: Decent work and economic growth
Sustainable Development Goals
SDG-08:Decent work and economic growth
SDG-09: Industry, innovation and infrastructure
SDG-09: Industry, innovation and infrastructure
Citation
du Plessis, S.; Arashi, M.; Maribe, G.; Millard, S.M. Efficient Estimation and Validation of Shrinkage Estimators in Big Data Analytics. Mathematics 2023, 11, 4632. https://doi.org/10.3390/math11224632.