Araştırma Makalesi
BibTex RIS Kaynak Göster
Yıl 2019, Cilt: 48 Sayı: 1, 255 - 273, 01.02.2019

Öz

Kaynakça

  • Alexander, T. L. and Chandrasekar, B. Simultaneous equivariant estimation of the parameters of matrix scale and matrix location-scale models, Statistical Papers 46, 483-507, 2005.
  • Bai, S. K. and Durairajan, T. M. Simultaneous equivariant estimation of the parameters of linear models, Statistical Papers 39, 125-134, 1998.
  • Brewster, J. F. and Zidek, J. V. Improving on equivariant estimators, Annals of Statistics 2, 21-38, 1974.
  • Brown, L. D. and Cohen, A. Point and confidence estimation of a common mean and recovery of interblock information, Annals of Statistics 2 (5), 963-976, 1974.
  • Chang, C. H. and Pal, N. Testing on the common mean of several normal distributions, Computational Statistics and Data Analysis 53, 321-333, 2008.
  • Hines, W. W., Montgomery, D. C., Goldsman, D. M. and Borror, D. M. Probability and Statistics in Engineering, John Wiley, New Work, 2008.
  • Keating, J. P. and Tripathi, R. C. Percentiles, estimation of 'Encyclopedia of Statistical Sciences, VI, 668-674, 1985.
  • Kiefer, J. Invariance minimax sequential estimation and contineous time processes, Annals of Mathematical Statistics 28, 573-601, 1957.
  • Kumar, S. and Tripathy, M. R. Estimating quantiles of normal populations with a common mean, Communications in Statistics-Theory and Methods 26, 115-118, 2011.
  • Lin, S. H. and Lee, J. C. Generalized inferences on the common mean of several normal populations, Journal of Statistical Planning and Inferences 134, 568-582, 2005.
  • Moore, B. and Krishnamoorthy, K. Combining independent normal sample means by weighting with their standard errors, Journal of Statistical Computation and Simulations 58, 145-153, 1997.
  • Pal, N., Lin, J. J., Chang, C. H. and Kumar, S. A revisit to the common mean problem: Comparing the maximum likelihood estimator with the Graybill-Deal estimator, Computational Statistics and Data Analysis 51, 5673-5681, 2007.
  • Rohatgi, V. K. and Saleh, A. Md. E. An Introduction to Probability and Statistics, John Wiley, 2nd Edition, New Work, 2003.
  • Rukhin, A. L. A class of minimax estimators of a normal quantile, Statistics and Probability Letters 1, 217-221, 1983.
  • Rukhin, A. L. Admissibility and minimaxity results in the estimation problem of exponential quantiles, Annals of Statistics 14, 220-237, 1986.
  • Saleh, A. K. Md. E. Estimating quantiles of exponential distributions, In:Statistics and Related Topics, Csorgo, M., Dawson, D., Rao, J. N. K., Saleh, A. K. Md. E. (Eds.), North Holland, Amsterdam, 279-283, 1981.
  • Sharma, D. and Kumar, S. Estimating quantiles of exponential populations, Statistics and Decisions, 12, 343-352, 1994.
  • Tripathy, M. R. and Kumar, S. Estimating a common mean of two normal populations, Journal of Statistical Theory and Applications 9 (2), 197-215, 2010.
  • Tsukuma, T. Simultaneous estimation of restricted location parameters based on permutation and sign-change, Statistical Papers 53, 915-934, 2012.
  • Vazquez, G., Duval, S., Jacobs Jr, D. R. and Silventoinen, K. Comparison of body mass index, waist cicumference and waist/hip ratio in predicting incident diabetes: A meta analysis, Epidemilogic Reviews 29 (1), 115-128, 2007.
  • Zidek, J. V. Inadmissibility of the best invariant estimators of extreme quantiles of the normal law under squared error loss, Annals of Mathematical Statistics 40 (5), 1801-1808, 1969.
  • Zidek, J. V. Inadmissibility of a class of estimators of a normal quantile, The Annals of Mathematical Statistics 42 (4), 1444-1447, 1971.

Equivariant estimation of quantile vector of two normal populations with a common mean

Yıl 2019, Cilt: 48 Sayı: 1, 255 - 273, 01.02.2019

Öz

The problem of estimating quantile vector $\theta=(\theta_1,\theta_2)$ of two normal populations, under the assumption that the means ($\mu_i$s) are equal has been considered. Here $\theta_i=\mu+\eta\sigma_i,$ $i=1,2,$ denotes the $p^{th}$ quantile of the $i^{th}$ population, where $\eta=\Phi^{-1}(p)$, $0<p<1,$ and $\Phi$ denotes the c.d.f. of a standard normal random variable. The loss function is taken as sum of the quadratic losses. First, a general result has been proved which helps in constructing some improved estimators for the quantile vector $\theta.$ Further, classes of equivariant estimators have been proposed and sufficient conditions for improving estimators in these classes are derived. In the process, two complete class results have been proved. A numerical comparison of these estimators are done and recommendations have been made for the use of these estimators. Finally, we conclude our results with some practical examples.

Kaynakça

  • Alexander, T. L. and Chandrasekar, B. Simultaneous equivariant estimation of the parameters of matrix scale and matrix location-scale models, Statistical Papers 46, 483-507, 2005.
  • Bai, S. K. and Durairajan, T. M. Simultaneous equivariant estimation of the parameters of linear models, Statistical Papers 39, 125-134, 1998.
  • Brewster, J. F. and Zidek, J. V. Improving on equivariant estimators, Annals of Statistics 2, 21-38, 1974.
  • Brown, L. D. and Cohen, A. Point and confidence estimation of a common mean and recovery of interblock information, Annals of Statistics 2 (5), 963-976, 1974.
  • Chang, C. H. and Pal, N. Testing on the common mean of several normal distributions, Computational Statistics and Data Analysis 53, 321-333, 2008.
  • Hines, W. W., Montgomery, D. C., Goldsman, D. M. and Borror, D. M. Probability and Statistics in Engineering, John Wiley, New Work, 2008.
  • Keating, J. P. and Tripathi, R. C. Percentiles, estimation of 'Encyclopedia of Statistical Sciences, VI, 668-674, 1985.
  • Kiefer, J. Invariance minimax sequential estimation and contineous time processes, Annals of Mathematical Statistics 28, 573-601, 1957.
  • Kumar, S. and Tripathy, M. R. Estimating quantiles of normal populations with a common mean, Communications in Statistics-Theory and Methods 26, 115-118, 2011.
  • Lin, S. H. and Lee, J. C. Generalized inferences on the common mean of several normal populations, Journal of Statistical Planning and Inferences 134, 568-582, 2005.
  • Moore, B. and Krishnamoorthy, K. Combining independent normal sample means by weighting with their standard errors, Journal of Statistical Computation and Simulations 58, 145-153, 1997.
  • Pal, N., Lin, J. J., Chang, C. H. and Kumar, S. A revisit to the common mean problem: Comparing the maximum likelihood estimator with the Graybill-Deal estimator, Computational Statistics and Data Analysis 51, 5673-5681, 2007.
  • Rohatgi, V. K. and Saleh, A. Md. E. An Introduction to Probability and Statistics, John Wiley, 2nd Edition, New Work, 2003.
  • Rukhin, A. L. A class of minimax estimators of a normal quantile, Statistics and Probability Letters 1, 217-221, 1983.
  • Rukhin, A. L. Admissibility and minimaxity results in the estimation problem of exponential quantiles, Annals of Statistics 14, 220-237, 1986.
  • Saleh, A. K. Md. E. Estimating quantiles of exponential distributions, In:Statistics and Related Topics, Csorgo, M., Dawson, D., Rao, J. N. K., Saleh, A. K. Md. E. (Eds.), North Holland, Amsterdam, 279-283, 1981.
  • Sharma, D. and Kumar, S. Estimating quantiles of exponential populations, Statistics and Decisions, 12, 343-352, 1994.
  • Tripathy, M. R. and Kumar, S. Estimating a common mean of two normal populations, Journal of Statistical Theory and Applications 9 (2), 197-215, 2010.
  • Tsukuma, T. Simultaneous estimation of restricted location parameters based on permutation and sign-change, Statistical Papers 53, 915-934, 2012.
  • Vazquez, G., Duval, S., Jacobs Jr, D. R. and Silventoinen, K. Comparison of body mass index, waist cicumference and waist/hip ratio in predicting incident diabetes: A meta analysis, Epidemilogic Reviews 29 (1), 115-128, 2007.
  • Zidek, J. V. Inadmissibility of the best invariant estimators of extreme quantiles of the normal law under squared error loss, Annals of Mathematical Statistics 40 (5), 1801-1808, 1969.
  • Zidek, J. V. Inadmissibility of a class of estimators of a normal quantile, The Annals of Mathematical Statistics 42 (4), 1444-1447, 1971.
Toplam 22 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular İstatistik
Bölüm İstatistik
Yazarlar

Manas Ranjan Tripathy

Adarsha Kumar Jena Bu kişi benim

Somesh Kumar Bu kişi benim

Yayımlanma Tarihi 1 Şubat 2019
Yayımlandığı Sayı Yıl 2019 Cilt: 48 Sayı: 1

Kaynak Göster

APA Tripathy, M. R., Jena, A. K., & Kumar, S. (2019). Equivariant estimation of quantile vector of two normal populations with a common mean. Hacettepe Journal of Mathematics and Statistics, 48(1), 255-273.
AMA Tripathy MR, Jena AK, Kumar S. Equivariant estimation of quantile vector of two normal populations with a common mean. Hacettepe Journal of Mathematics and Statistics. Şubat 2019;48(1):255-273.
Chicago Tripathy, Manas Ranjan, Adarsha Kumar Jena, ve Somesh Kumar. “Equivariant Estimation of Quantile Vector of Two Normal Populations With a Common Mean”. Hacettepe Journal of Mathematics and Statistics 48, sy. 1 (Şubat 2019): 255-73.
EndNote Tripathy MR, Jena AK, Kumar S (01 Şubat 2019) Equivariant estimation of quantile vector of two normal populations with a common mean. Hacettepe Journal of Mathematics and Statistics 48 1 255–273.
IEEE M. R. Tripathy, A. K. Jena, ve S. Kumar, “Equivariant estimation of quantile vector of two normal populations with a common mean”, Hacettepe Journal of Mathematics and Statistics, c. 48, sy. 1, ss. 255–273, 2019.
ISNAD Tripathy, Manas Ranjan vd. “Equivariant Estimation of Quantile Vector of Two Normal Populations With a Common Mean”. Hacettepe Journal of Mathematics and Statistics 48/1 (Şubat 2019), 255-273.
JAMA Tripathy MR, Jena AK, Kumar S. Equivariant estimation of quantile vector of two normal populations with a common mean. Hacettepe Journal of Mathematics and Statistics. 2019;48:255–273.
MLA Tripathy, Manas Ranjan vd. “Equivariant Estimation of Quantile Vector of Two Normal Populations With a Common Mean”. Hacettepe Journal of Mathematics and Statistics, c. 48, sy. 1, 2019, ss. 255-73.
Vancouver Tripathy MR, Jena AK, Kumar S. Equivariant estimation of quantile vector of two normal populations with a common mean. Hacettepe Journal of Mathematics and Statistics. 2019;48(1):255-73.