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Large and Moderate Deviations Principles for Recursive Kernel Estimator of a Multivariate Density and its Partial Derivatives

Mokkadem, Abdelkader, Mariane, Pelletier, Baba, Thiam (2006)

Serdica Mathematical Journal

2000 Mathematics Subject Classification: 62G07, 60F10.In this paper we prove large and moderate deviations principles for the recursive kernel estimator of a probability density function and its partial derivatives. Unlike the density estimator, the derivatives estimators exhibit a quadratic behaviour not only for the moderate deviations scale but also for the large deviations one. We provide results both for the pointwise and the uniform deviations.

Least-squares trigonometric regression estimation

Waldemar Popiński (1999)

Applicationes Mathematicae

The problem of nonparametric function fitting using the complete orthogonal system of trigonometric functions e k , k=0,1,2,..., for the observation model y i = f ( x i n ) + η i , i=1,...,n, is considered, where η i are uncorrelated random variables with zero mean value and finite variance, and the observation points x i n [ 0 , 2 π ] , i=1,...,n, are equidistant. Conditions for convergence of the mean-square prediction error ( 1 / n ) i = 1 n E ( f ( x i n ) - f ^ N ( n ) ( x i n ) ) 2 , the integrated mean-square error E f - f ^ N ( n ) 2 and the pointwise mean-square error E ( f ( x ) - N ( n ) ( x ) ) 2 of the estimator f ^ N ( n ) ( x ) = k = 0 N ( n ) c ^ k e k ( x ) for f ∈ C[0,2π] and...

Limit state analysis on the un-repeated multiple selection bounded confidence model

Jiangbo Zhang, Yiyi Zhao (2023)

Kybernetika

In this paper, we study the opinion evolution over social networks with a bounded confidence rule. Node initial opinions are independently and identically distributed. At each time step, each node reviews the average opinions of several different randomly selected agents and updates its opinion only when the difference between its opinion and the average is below a threshold. First of all, we provide probability bounds of the opinion convergence and the opinion consensus, are both nontrivial events...

Limit theorems for rank statistics detecting gradual changes

Aleš Slabý (2001)

Commentationes Mathematicae Universitatis Carolinae

The purpose of the paper is to investigate weak asymptotic behaviour of rank statistics proposed for detection of gradual changes, linear trends in particular. The considered statistics can be used for various test procedures. The fundaments of the proofs are formed by results of Hušková [4] and Jarušková [5].

Local Asymptotic Normality Property for Lacunar Wavelet Series multifractal model

Jean-Michel Loubes, Davy Paindaveine (2011)

ESAIM: Probability and Statistics

We consider a lacunar wavelet series function observed with an additive Brownian motion. Such functions are statistically characterized by two parameters. The first parameter governs the lacunarity of the wavelet coefficients while the second one governs its intensity. In this paper, we establish the local and asymptotic normality (LAN) of the model, with respect to this couple of parameters. This enables to prove the optimality of an estimator for the lacunarity parameter, and to build optimal...

Local Asymptotic Normality Property for Lacunar Wavelet Series multifractal model*

Jean-Michel Loubes, Davy Paindaveine (2012)

ESAIM: Probability and Statistics

We consider a lacunar wavelet series function observed with an additive Brownian motion. Such functions are statistically characterized by two parameters. The first parameter governs the lacunarity of the wavelet coefficients while the second one governs its intensity. In this paper, we establish the local and asymptotic normality (LAN) of the model, with respect to this couple of parameters. This enables to prove the optimality of an estimator for the lacunarity parameter, and to build optimal...

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