Local Linear Regression Estimator on the Boundary Correction in Nonparametric Regression Estimation
- DOI
- 10.2991/jsta.d.201016.001How to use a DOI?
- Keywords
- Kernel estimators; Nonparametric regression estimation; Local linear regression; Bias; Variance; Asymptotic mean integrated square error (AMISE)
- Abstract
The precision and accuracy of any estimation can inform one whether to use or not to use the estimated values. It is the crux of the matter to many if not all statisticians. For this to be realized biases of the estimates are normally checked and eliminated or at least minimized. Even with this in mind getting a model that fits the data well can be a challenge. There are many situations where parametric estimation is disadvantageous because of the possible misspecification of the model. Under such circumstance, many researchers normally allow the data to suggest a model for itself in the technique that has become so popular in recent years called the nonparametric regression estimation. In this technique the use of kernel estimators is common. This paper explores the famous Nadaraya–Watson estimator and local linear regression estimator on the boundary bias. A global measure of error criterion-asymptotic mean integrated square error (AMISE) has been computed from simulated data at the empirical stage to assess the performance of the two estimators in regression estimation. This study shows that local linear regression estimator has a sterling performance over the standard Nadaraya–Watson estimator.
- Copyright
- © 2020 The Authors. Published by Atlantis Press B.V.
- Open Access
- This is an open access article distributed under the CC BY-NC 4.0 license (http://creativecommons.org/licenses/by-nc/4.0/).
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TY - JOUR AU - Langat Reuben Cheruiyot PY - 2020 DA - 2020/10/23 TI - Local Linear Regression Estimator on the Boundary Correction in Nonparametric Regression Estimation JO - Journal of Statistical Theory and Applications SP - 460 EP - 471 VL - 19 IS - 3 SN - 2214-1766 UR - https://doi.org/10.2991/jsta.d.201016.001 DO - 10.2991/jsta.d.201016.001 ID - Cheruiyot2020 ER -