Abstract

The aim of this study is to investigate the solution of the statistical inference problem for the geometric process (GP) when the distribution of first occurrence time is assumed to be Rayleigh. Maximum likelihood (ML) estimators for the parameters of GP, where a and λ are the ratio parameter of GP and scale parameter of Rayleigh distribution, respectively, are obtained. In addition, we derive some important asymptotic properties of these estimators such as normality and consistency. Then we run some simulation studies by different parameter values to compare the estimation performances of the obtained ML estimators with the non-parametric modified moment (MM) estimators. The results of the simulation studies show that the obtained estimators are more efficient than the MM estimators.

Highlights

  • Counting process is quite suitable and widely used method for the statistical analysis of the occurrence times of successive events

  • The aim of this study is to investigate the solution of the statistical inference problem for the geometric process (GP) when the distribution of ...rst occurrence time is assumed to be Rayleigh

  • We consider the parameter estimation problem in the GP by assuming that distribution of the ...rst occurrence time is Rayleigh with the scale parameter

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Summary

Introduction

Counting process is quite suitable and widely used method for the statistical analysis of the occurrence times of successive events. Renewal process (RP) can be used for analyzing of this data, if successive arrival times are independent and identically distributed (iid). Estimation of the mean and variance of the ...rst occurrence time X1 and ratio parameter a are very important for GP. The main objective of this study is to estimate the parameters in GP when the distribution of ...rst occurrence time X1 is Rayleigh with parameter. The problem of statistical inference for GP with the Weibull distribution has been investigated by Aydogdu et al [3] within the framework of the modi...ed maximum likelihood method (MML).

Overview to Rayleigh distribution
Inference for GP
Xn 2n ai
Monte Carlo simulation study
Application
Conclusion
Full Text
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