Estimation ofP(X>Y) whenXandYare dependent random variables using different bivariate sampling schemes
Author(s) -
Hani M. Samawi,
Amal Helu,
Haresh Rochani,
Jingjing Yin,
Daniel F. Linder
Publication year - 2016
Publication title -
communications for statistical applications and methods
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.326
H-Index - 6
eISSN - 2383-4757
pISSN - 2287-7843
DOI - 10.5351/csam.2016.23.5.385
Subject(s) - mathematics , estimator , statistics , bivariate analysis , simple random sample , nonparametric statistics , random variable , sampling (signal processing) , mean squared error , kernel density estimation , computer science , population , demography , filter (signal processing) , sociology , computer vision
The stress-strength models have been intensively investigated in the literature in regards of estimating the reliability θ = P (X > Y) using parametric and nonparametric approaches under different sampling schemes when X and Y are independent random variables. In this paper, we consider the problem of estimating θ when (X, Y) are dependent random variables with a bivariate underlying distribution. The empirical and kernel estimates of θ = P (X > Y), based on bivariate ranked set sampling (BVRSS) are considered, when (X,Y) are paired dependent continuous random variables. The estimators obtained are compared to their counterpart, bivariate simple random sampling (BVSRS), via the bias and mean square error (MSE). We demonstrate that the suggested estimators based on BVRSS are more efficient than those based on BVSRS. A simulation study is conducted to gain insight into the performance of the proposed estimators. A real data example is provided to illustrate the process.
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