Exponentially tilted empirical distribution function for ranked set samples

被引:0
作者
Saeid Amiri
Mohammad Jafari Jozani
Reza Modarres
机构
[1] University of Iowa,Department of Statistics and Actuarial Science
[2] University of Manitoba,Department of Statistics
[3] The George Washington University,Department of Statistics
来源
Journal of the Korean Statistical Society | 2016年 / 45卷
关键词
primary 62F40; secondary 62G30; Distribution function; Exponential tilting; Imperfect ranking; Ranked set sample;
D O I
暂无
中图分类号
学科分类号
摘要
We study nonparametric estimation of the distribution function (DF) of a continuous random variable based on a ranked set sampling design using the exponentially tilted (ET) empirical likelihood method. We propose ET estimators of the DF and use them to construct new resampling algorithms for unbalanced ranked set samples. We explore the properties of the proposed algorithms. For a hypothesis testing problem about the underlying population mean, we show that the bootstrap tests based on the ET estimators of the DF are asymptotically normal and exhibit a small bias of order O(n−1). We illustrate the methods and evaluate the finite sample performance of the algorithms under both perfect and imperfect ranking schemes using a real data set and several Monte Carlo simulation studies. We compare the performance of the test statistics based on the ET estimators with those based on the empirical likelihood estimators.
引用
收藏
页码:176 / 187
页数:11
相关论文
共 40 条
  • [1] Ahn S(2014)The Student’st approximation to distributions of pivotal statistics from ranked set samples Journal of the Korean Statistical Society 43 643-652
  • [2] Lim J(2014)Resampling unbalanced ranked set sampling with application in testing hypothesis about the population mean Journal of Agricultural, Biological, and Environmental Statistics 19 1-17
  • [3] Wang X(2009)Empirical likelihood intervals for the population mean and quantiles based on balanced ranked set samples Statistical Methods and Applications 18 483-505
  • [4] Amiri S J(2011)Empirical likelihood for small area estimation Biometrika 98 473-480
  • [5] Jozani M(1990)Nonparametric confidence limits by resampling methods and least favourable families International Statistical Review 58 59-76
  • [6] Modarres R(1981)Nonparametric standard errors and confidence intervals (with discussion) The Canadian Journal of Statistics 9 139-172
  • [7] Baklizi A(1999)On the relative accuracy of certain bootstrap procedures The Canadian Journal of Statistics 27 225-236
  • [8] Chaudhuri S(2007)Nonparametric tests for perfect judgment rankings Journal of the American Statistical Association 102 708-717
  • [9] Ghosh M(2013)Most powerful rank tests for perfect rankings Computational Statistics & Data Analysis 60 157-168
  • [10] DiCiccio T J(2012)Randomized nomination sampling for finite populations Journal of Statistical Planning and Inference 142 2103-2115