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primary 59 Copula 15 Asymptotic normality 14 Variable selection 14 Bootstrap 12 Order statistics 11 Consistency 10 Covariance matrix 10 Dimension reduction 10 Longitudinal data 10 Nonparametric regression 10 asymptotic normality 10 EM algorithm 9 Empirical likelihood 9 Oracle property 9 Robust estimation 9 Hypothesis testing 8 Kernel smoothing 8 Nonparametric estimation 8 Elliptical distribution 7 Elliptically contoured distribution 7 Empirical Bayes 7 High-dimensional data 7 Multivariate normal distribution 7 Sufficient dimension reduction 7 Central limit theorem 6 Linear mixed model 6 Model selection 6 Principal component analysis 6 SCAD 6 Sliced inverse regression 6 U-statistic 6 Dirichlet distribution 5 Discriminant analysis 5 Estimating equations 5 Heteroscedasticity 5 Majorization 5 Markov chain Monte Carlo 5 Maximum likelihood estimator 5 Missing at random 5
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Article 3,562
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Hall, Peter 26 Fujikoshi, Yasunori 24 Balakrishnan, N. 23 Kubokawa, Tatsuya 20 Khatri, C. G. 19 Krishnaiah, P. R. 19 Sen, Pranab Kumar 19 Takemura, Akimichi 18 Bai, Z. D. 17 Horváth, Lajos 16 Srivastava, M. S. 16 Strawderman, William E. 16 Wang, Qihua 16 Puri, Madan L. 15 Rao, C. Radhakrishna 15 Srivastava, Muni S. 15 Zhu, Lixing 15 Ghosh, Malay 13 Gupta, Arjun K. 13 Joe, Harry 13 Zhu, Li-Xing 12 Hu, Taizhong 11 Nadarajah, Saralees 11 Richards, Donald St. P. 11 Shaked, Moshe 11 Tsai, Ming-Tien 11 You, Jinhong 11 Arellano-Valle, Reinaldo B. 10 Boente, Graciela 10 Fourdrinier, Dominique 10 Genton, Marc G. 10 Lian, Heng 10 Scarsini, Marco 10 Díaz-García, José A. 9 Kariya, Takeaki 9 Mathew, Thomas 9 Peng, Liang 9 Silverstein, Jack W. 9 von Rosen, Dietrich 9 Chikuse, Yasuko 8
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Journal of Multivariate Analysis 3,562
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Showing 1,391 - 1,400 of 3,562
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The matrix-t distribution and its applications in predictive inference
Kibria, B.M. Golam - In: Journal of Multivariate Analysis 97 (2006) 3, pp. 785-795
The predictive distributions of the future responses and regression matrix under the multivariate elliptically contoured distributions are derived using structural approach. The predictive distributions are obtained as matrix-t which are identical to those obtained under matrix normal and...
Persistent link: https://www.econbiz.de/10005199441
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Bayesian modeling of several covariance matrices and some results on propriety of the posterior for linear regression with correlated and/or heterogeneous errors
Daniels, Michael J. - In: Journal of Multivariate Analysis 97 (2006) 5, pp. 1185-1207
We explore simultaneous modeling of several covariance matrices across groups using the spectral (eigenvalue) decomposition and modified Cholesky decomposition. We introduce several models for covariance matrices under different assumptions about the mean structure. We consider 'dependence'...
Persistent link: https://www.econbiz.de/10005199498
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Consistency of the generalized MLE of a joint distribution function with multivariate interval-censored data
Yu, Shaohua; Yu, Qiqing; Wong, George Y.C. - In: Journal of Multivariate Analysis 97 (2006) 3, pp. 720-732
Wong and Yu [Generalized MLE of a joint distribution function with multivariate interval-censored data, J. Multivariate Anal. 69 (1999) 155-166] discussed generalized maximum likelihood estimation of the joint distribution function of a multivariate random vector whose coordinates are subject to...
Persistent link: https://www.econbiz.de/10005199510
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Total positivity order and the normal distribution
Rinott, Yosef; Scarsini, Marco - In: Journal of Multivariate Analysis 97 (2006) 5, pp. 1251-1261
Unlike the usual stochastic order, total positivity order is closed under conditioning. Here we provide a general formulation of the preservation properties of the order under conditioning; we study certain properties of the order including translation properties and the implications of having...
Persistent link: https://www.econbiz.de/10005199520
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Bias correction of cross-validation criterion based on Kullback-Leibler information under a general condition
Yanagihara, Hirokazu; Tonda, Tetsuji; Matsumoto, Chieko - In: Journal of Multivariate Analysis 97 (2006) 9, pp. 1965-1975
This paper deals with the bias correction of the cross-validation (CV) criterion to estimate the predictive Kullback-Leibler information. A bias-corrected CV criterion is proposed by replacing the ordinary maximum likelihood estimator with the maximizer of the adjusted log-likelihood function....
Persistent link: https://www.econbiz.de/10005199531
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Some positive dependence stochastic orders
Colangelo, Antonio; Scarsini, Marco; Shaked, Moshe - In: Journal of Multivariate Analysis 97 (2006) 1, pp. 46-78
In this paper we study some stochastic orders of positive dependence that arise when the underlying random vectors are ordered with respect to some multivariate hazard rate stochastic orders, and have the same univariate marginal distributions. We show how the orders can be studied by...
Persistent link: https://www.econbiz.de/10005199563
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Interpreting Kullback-Leibler divergence with the Neyman-Pearson lemma
Eguchi, Shinto; Copas, John - In: Journal of Multivariate Analysis 97 (2006) 9, pp. 2034-2040
Kullback-Leibler divergence and the Neyman-Pearson lemma are two fundamental concepts in statistics. Both are about likelihood ratios: Kullback-Leibler divergence is the expected log-likelihood ratio, and the Neyman-Pearson lemma is about error rates of likelihood ratio tests. Exploring this...
Persistent link: https://www.econbiz.de/10005199566
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PLS regression: A directional signal-to-noise ratio approach
Druilhet, Pierre; Mom, Alain - In: Journal of Multivariate Analysis 97 (2006) 6, pp. 1313-1329
We present a new approach to univariate partial least squares regression (PLSR) based on directional signal-to-noise ratios (SNRs). We show how PLSR, unlike principal components regression, takes into account the actual value and not only the variance of the ordinary least squares (OLS)...
Persistent link: https://www.econbiz.de/10005199592
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Optimizing random scan Gibbs samplers
Levine, Richard A.; Casella, George - In: Journal of Multivariate Analysis 97 (2006) 10, pp. 2071-2100
The Gibbs sampler is a popular Markov chain Monte Carlo routine for generating random variates from distributions otherwise difficult to sample. A number of implementations are available for running a Gibbs sampler varying in the order through which the full conditional distributions used by the...
Persistent link: https://www.econbiz.de/10005199612
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Limit distributions of least squares estimators in linear regression models with vague concepts
Krätschmer, Volker - In: Journal of Multivariate Analysis 97 (2006) 5, pp. 1044-1069
Linear regression models with vague concepts extend the classical single equation linear regression models by admitting observations in form of fuzzy subsets instead of real numbers. They have lately been introduced (cf. [V. Krätschmer, Induktive Statistik auf Basis unscharfer Meßkonzepte am...
Persistent link: https://www.econbiz.de/10005199625
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