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Comparison Between Methods Estimation of Rayleigh Distribution

Cover von Comparison Between Methods Estimation of Rayleigh Distribution

Abdul Abbas Al- Aabdi, Fadhil/Zuhair Ali Karidi, Mujtaba

LAP Lambert Academic Publishing

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Zusatztext

We have estimated the parameters of a Rayleigh distribution using different ways, including traditional methods (classical), such as (Least Squares Method, Maximum Likelihood Method, White Method and Ridge Regression Method). The Robust methods we used are (Robustfit Method, M-estimator Method and Robust Ridge Regression Method). These methods are used to find the estimators of the parameters of this distribution we adopt an experimental study to design a number of simulation experiments (Simulation) using the software package Matlab. Default values for the parameters of the distribution and different sample sizes are used. The experiment is repeated 1000 times to get a high homogeneity. For comparison between estimators to determine which is better Several scales, including the scale Mean Squares Error (MSE) and the measure of the Mean Squares Error of Parameters (MSE) and II measure the coefficient of determination R2, have been used. It has been found that the least squares method is the best method of estimation among classical methods Robustfit is the best method among the Robust methods in both simulation experiments and field study of the real data.

Autorenportrait

Prof.Dr. Fadhil Al-Abidi holds a PhD in statistics from Baghdad University in 2001, he is Dean of college and faculty member in Al-Furat Al-Awast University. Mujtaba Zuhair holds a Msc in mathematics science from the University of Kufa in 2014, work Computer Technical Engineering Department, Faculty of Technical Engineering, The Islamic University.

Weitere Details

Erschienen: 03.09.2018

Umfang: 136 S.

Sprache: ENG

Einband: KT

Format: 0.9 x 22 x 15 cm

ISBN/EAN: 9786139898596

Umbreit-Nr.: 5557610

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