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On the least trimmed squares estimators for JS circular regression model
Journal article   Open access  Peer reviewed

On the least trimmed squares estimators for JS circular regression model

Shokrya Saleh Alshqaq and Dept. of Mathematics, College of Sciences, Jazan University, Saudia Arabia
Kuwait journal of science, Vol.48(3)
01/07/2021

Abstract

Multidisciplinary Sciences Science & Technology Science & Technology - Other Topics
The least trimmed squares (LTS) estimation has been successfully used in the robust linear regression models. This article extends the LTS estimation to the Jammalamadaka and Sarma (JS) circular regression model. The robustness of the proposed estimator is studied and the used algorithm for computation is discussed. Simulation studied, and real data show that the proposed robust circular estimator effectively fits JS circular models in the presence of vertical outliers and leverage points.
url
https://doi.org/10.48129/kjs.v48i3.10004View
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