Estimation of parameters of the half-logistic distribution using generalized ranked set sampling
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Publication:1566689
DOI10.1016/S0167-9473(99)00035-3zbMath1016.62014OpenAlexW2064453215MaRDI QIDQ1566689
Publication date: 4 June 2000
Published in: Computational Statistics and Data Analysis (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1016/s0167-9473(99)00035-3
order statisticslinear estimationranked-set samplinghalf-logistic distributiongeneralized ranked-set sampling
Related Items (5)
Bias Reduction for the Maximum Likelihood Estimators of the Parameters in the Half-Logistic Distribution ⋮ Bayesian prediction bounds for the exponential-type distribution based on ordered ranked set sampling ⋮ Bayesian inference and prediction of the Rayleigh distribution based on ordered ranked set sampling ⋮ Bayesian estimation based on ranked set sampling using asymmetric loss function ⋮ Exact prediction intervals for future exponential and Pareto lifetimes based on ordered ranked set sampling of non-random and random size
Cites Work
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- Approximate BLUEs of the parameters of the half logistic distribution based on fairly large doubly censored samples
- On unbiased estimates of the population mean based on the sample stratified by means of ordering
- A review of nonparametric ranked-set sampling methodology
- Approximate MLEs for the location and scale parameters of the half-logistic distribution with type-II right-censoring
- Ranked Set Sampling Theory with Order Statistics Background
- Order statistics from the half logistic distribution
- Characterization of a Ranked-Set Sample with Application to Estimating Distribution Functions
- Best linear unbiased estimators of location and scale parameters of the half logistic distribution
- Best Linear Unbiased Estimation of Location and Scale Parameters of the Half-Logistic Distribution Based on Type II Censored Samples
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