Local Polynomial Lp-norm Regression
Local Polynomial Lp-norm Regression
The local least squares estimator for a regression curve cannot provide optimal results when non-Gaussian noise is present. Both theoretical and empirical evidence suggests that residuals often exhibit distributional properties different from those of a normal distribution, making it worthwhile to consider estimation based on other norms. It is suggested that $L_p$-norm estimators be used to minimize the residuals when these exhibit non-normal kurtosis. In this paper, we propose a local polynomial $L_p$-norm regression that replaces weighted least squares estimation with weighted $L_p$-norm estimation for fitting the polynomial locally. We also introduce a new method for estimating the parameter $p$ from the residuals, enhancing the adaptability of the approach. Through numerical and theoretical investigation, we demonstrate our method's superiority over local least squares in one-dimensional data and show promising outcomes for higher dimensions, specifically in 2D.
Ladan Tazik、James Stafford、John Braun
Dept. of Computer Science, Mathematics, Physics and Statistics, University of British Columbia, Okanagan campusDept. of Statistical Sciences, University of TorontoDept. of Computer Science, Mathematics, Physics and Statistics, University of British Columbia, Okanagan campus
数学
Ladan Tazik,James Stafford,John Braun.Local Polynomial Lp-norm Regression[EB/OL].(2025-04-25)[2025-05-28].https://arxiv.org/abs/2504.18695.点此复制
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