Litcius/Paper detail

Estimation of the bandwidth parameter in Nadaraya-Watson kernel non-parametric regression based on universal threshold level

Taha Hussein Ali, Heyam A. A. Hayawi, Delshad Shaker Ismael Botani

2021Communications in Statistics - Simulation and Computation21 citationsDOI

Abstract

This paper proposes a new improvement of the Nadaraya-Watson kernel non-parametric regression estimator and the bandwidth of this new improvement is obtained depending on universal threshold level with wavelet of kernel function instead of using fixed bandwidth and variable bandwidth for geometric, arithmetic mean, range and median measurements. A simulation study is presented, including comparisons between the proposed method and five others Nadaraya-Watson kernel estimators (classical methods), as well as using real data depending on a program written in MATLAB language which was designed for this purpose. It was concluded that the proposed method is more accurate than all classical methods for all simulations and real data based on MSE criterion.

Topics & Concepts

Kernel regressionBandwidth (computing)EstimatorMathematicsKernel (algebra)Parametric statisticsApplied mathematicsVariable kernel density estimationKernel smootherAlgorithmStatisticsComputer scienceKernel methodArtificial intelligenceRadial basis function kernelDiscrete mathematicsSupport vector machineComputer networkControl Systems and IdentificationStatistical Methods and InferenceStructural Health Monitoring Techniques