Robust Multiple Regression

Scott, David and Wang, Zhipeng (2021) Robust Multiple Regression. Entropy, 23 (1). p. 88. ISSN 1099-4300

[thumbnail of entropy-23-00088-v2.pdf] Text
entropy-23-00088-v2.pdf - Published Version

Download (1MB)

Abstract

As modern data analysis pushes the boundaries of classical statistics, it is timely to reexamine alternate approaches to dealing with outliers in multiple regression. As sample sizes and the number of predictors increase, interactive methodology becomes less effective. Likewise, with limited understanding of the underlying contamination process, diagnostics are likely to fail as well. In this article, we advocate for a non-likelihood procedure that attempts to quantify the fraction of bad data as a part of the estimation step. These ideas also allow for the selection of important predictors under some assumptions. As there are many robust algorithms available, running several and looking for interesting differences is a sensible strategy for understanding the nature of the outliers. View Full-Text

Item Type: Article
Uncontrolled Keywords: minimum distance estimation; maximum likelihood estimation; influence functions
Subjects: STM Repository > Physics and Astronomy
Depositing User: Managing Editor
Date Deposited: 10 May 2023 06:01
Last Modified: 31 Jul 2024 12:29
URI: http://classical.goforpromo.com/id/eprint/464

Actions (login required)

View Item
View Item