Choice of Bandwidth for Nonparametric Regression Models using Kernel Smoothing: A Simulation Study

Authors

  • Dursun Ayd?n Department of Statistics Mu?la S?tk? Ko
  • G Department of Statistics Mu?la S?tk? Ko
  • Ak?n Fit Department of Statistics Mu?la S?tk? Ko

Keywords:

Kernel smoothing, Smoothing spline, Nonparametric regression, Bandwidth, Selection method.

Abstract

In this study, kernel smoothing method is considered in the estimation of nonparametric regression models.

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Published

2016-03-19

How to Cite

Ayd?n, D., G, ., & Fit, A. (2016). Choice of Bandwidth for Nonparametric Regression Models using Kernel Smoothing: A Simulation Study. International Journal of Sciences: Basic and Applied Research (IJSBAR), 26(1), 47–61. Retrieved from https://gssrr.org/index.php/JournalOfBasicAndApplied/article/view/5386

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Articles