On estimation in the multidimensional Gaussian model
Bogusława Bednarek-Kozek (1973)
Applicationes Mathematicae
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Bogusława Bednarek-Kozek (1973)
Applicationes Mathematicae
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Sudakov, V.N., Sudakov, A.V. (2004)
Zapiski Nauchnykh Seminarov POMI
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M. Kozłowska, R. Walkowiak (1988)
Applicationes Mathematicae
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Nicolas Privault, Anthony Réveillac (2011)
ESAIM: Probability and Statistics
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Using integration by parts on Gaussian space we construct a Stein Unbiased Risk Estimator (SURE) for the drift of Gaussian processes, based on their local and occupation times. By almost-sure minimization of the SURE risk of shrinkage estimators we derive an estimation and de-noising procedure for an input signal perturbed by a continuous-time Gaussian noise.
Jean-Claude Massé (1997)
Metrika
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J. Bartoszewicz (1977)
Applicationes Mathematicae
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Shayle R. Searle (1995)
Metrika
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Beniamin Goldys (1985)
Banach Center Publications
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Nicolas Privault, Anthony Réveillac (2012)
ESAIM: Probability and Statistics
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Using integration by parts on Gaussian space we construct a Stein Unbiased Risk Estimator (SURE) for the drift of Gaussian processes, based on their local and occupation times. By almost-sure minimization of the SURE risk of shrinkage estimators we derive an estimation and de-noising procedure for an input signal perturbed by a continuous-time Gaussian noise.
Marta Ferreira (2013)
Discussiones Mathematicae Probability and Statistics
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In this paper we consider an autoregressive Pareto process which can be used as an alternative to heavy tailed MARMA. We focus on the tail behavior and prove that the tail empirical quantile function can be approximated by a Gaussian process. This result allows to derive a class of consistent and asymptotically normal estimators for the shape parameter. We will see through simulation that the usual estimation procedure based on an i.i.d. setting may fall short of the desired precision. ...
C. Maugis-Rabusseau, B. Michel (2013)
ESAIM: Probability and Statistics
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Gaussian mixture models are widely used to study clustering problems. These model-based clustering methods require an accurate estimation of the unknown data density by Gaussian mixtures. In Maugis and Michel (2009), a penalized maximum likelihood estimator is proposed for automatically selecting the number of mixture components. In the present paper, a collection of univariate densities whose logarithm is locally -Hölder with moment and tail conditions are considered. We show that this...
J. Fischer (1982)
Metrika
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Jelena Bulatović, Alobodanka Janjić (1979)
Publications de l'Institut Mathématique
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S. Trybuła (1974)
Applicationes Mathematicae
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Romain Azaïs, François Dufour, Anne Gégout-Petit (2013)
Annales de l'I.H.P. Probabilités et statistiques
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This paper is devoted to the nonparametric estimation of the jump rate and the cumulative rate for a general class of non-homogeneous marked renewal processes, defined on a separable metric space. In our framework, the estimation needs only one observation of the process within a long time. Our approach is based on a generalization of the multiplicative intensity model, introduced by Aalen in the seventies. We provide consistent estimators of these two functions, under some assumptions...
Tomás Cipra, Asunción Rubio (1991)
Trabajos de Estadística
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The dynamic linear model with a non-linear non-Gaussian observation relation is considered in this paper. Masreliez's theorem (see Masreliez's (1975)) of approximate non-Gaussian filtering with linear state and observation relations is extended to the case of a non-linear observation relation that can be approximated by a second-order Taylor expansion.
R. Zmyślony (1976)
Applicationes Mathematicae
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