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Spatial Analyses

Tapered Covariance: Bayesian Estimation and Asymptotics

Pages 433-452 | Received 01 Nov 2010, Published online: 14 Jun 2012

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Yiming Wang & Sujit K. Ghosh. (2023) Nonparametric estimation of isotropic covariance function. Journal of Nonparametric Statistics 35:1, pages 198-237.
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Ethan Anderes, Raphaël Huser, Douglas Nychka & Marc Coram. (2013) Nonstationary Positive Definite Tapering On The Plane. Journal of Computational and Graphical Statistics 22:4, pages 848-865.
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Евгений Владимирович Бурнаев, Evgenii Vladimirovich Burnaev, Алексей Алексеевич Зайцев, Alexey Alekseevich Zaytsev, Владимир Григорьевич Спокойный & Vladimir Grigor'evich Spokoiny. (2013) Теорема Бернштейна - фон Мизеса для регрессии на основе гауссовских процессовThe Bernstein - von Mises theorem for regression based on Gaussian Processes. Успехи математических наук Uspekhi Matematicheskikh Nauk 68:5(413), pages 179-180.
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Candace Berrett & Catherine A. Calder. (2012) Data augmentation strategies for the Bayesian spatial probit regression model. Computational Statistics & Data Analysis 56:3, pages 478-490.
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