Estimate Kernel Ridge Regression Function in Multiple Regression

Authors

  • لقاء علي محمد
  • صابرين حسين كاظم

DOI:

https://doi.org/10.33095/jeas.v24i103.120

Keywords:

kernel ridge regression KRR , MLCV, AIC , Regularization parameter λ .

Abstract

             In general, researchers and statisticians in particular have been usually used non-parametric regression models when the parametric methods failed to fulfillment their aim to analyze the models  precisely. In this case the parametic methods are useless so they turn to non-parametric methods for its easiness in programming. Non-parametric methods can also used to assume the parametric regression model for subsequent use. Moreover, as an advantage of using non-parametric methods is to solve the problem of Multi-Colinearity between explanatory variables combined with nonlinear data. This problem can be solved by using kernel ridge regression which depend on what so-called bandwidth estimation (smoothing parameters). Therefore, for this purpose two different methods were used to estimate the smoothing parameter (Maximum Likelihood Cross-Validation (MLCV) and Akaike Information Criterion (AIC)). Furthermore, a comparision between the previouse methods had been provided using simulation technique , and the method of  Akaike Information Criterion (AIC) has been  found to be the best for the Gaussian function .

 

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Published

2018-04-01

Issue

Section

Statistical Researches

How to Cite

“Estimate Kernel Ridge Regression Function in Multiple Regression” (2018) Journal of Economics and Administrative Sciences, 24(103), p. 411. doi:10.33095/jeas.v24i103.120.

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