International audienceIn this paper, we give rates of convergence, for minimal distances and for the uniform distance, between the law of partial sums of martingale differences and thelimiting Gaussian distribution. More precisely, denoting by $P_{X}$ the law of a random variable $X$ and by $G_{a}$ the normal distribution ${\mathcal N} (0,a)$, we are interested by giving quantitative estimates for the convergence of $P_{S_n/\sqrt{V_n}}$ to $G_1$, where $S_n$ is the partial sum associated with either martingale differences sequences or more general dependent sequences, and $V_n= {\rm Var}(S_n)$. Applications to linear statistics, non stationary $\rho$-mixing sequences and sequential dynamical systems are given
AbstractThe proofs of various central limit theorems for strictly stationary sequences of random var...
In this paper, we study a general central limit theorem and a general law of the iterated logarithm ...
AbstractIn this paper, we give rates of convergence for minimal distances between linear statistics ...
International audienceIn this paper, we give rates of convergence, for minimal distances and for the...
In this paper, we give rates of convergence, for minimal distances and for the uniform distance, bet...
International audienceIn this paper, we give rates of convergence for minimal distances between line...
International audienceIn this paper, we give rates of convergence for minimal distances between line...
International audienceIn this paper, we give estimates of ideal or minimal distances between the dis...
To appear in Annales de l'I.H.P. (2004)We established the rate of convergence in the central limit t...
To appear in Annales de l'I.H.P. (2004)We established the rate of convergence in the central limit t...
AbstractNonuniform convergence rates in the central limit theorem for martingale difference arrays a...
We give optimal convergence rates in the central limit theorem for a large class of martingale diffe...
International audienceWe give optimal convergence rates in the central limit theorem for a large cla...
International audienceWe prove a central limit theorem for stationary multiple (random) fields of ma...
International audienceWe give optimal convergence rates in the central limit theorem for a large cla...
AbstractThe proofs of various central limit theorems for strictly stationary sequences of random var...
In this paper, we study a general central limit theorem and a general law of the iterated logarithm ...
AbstractIn this paper, we give rates of convergence for minimal distances between linear statistics ...
International audienceIn this paper, we give rates of convergence, for minimal distances and for the...
In this paper, we give rates of convergence, for minimal distances and for the uniform distance, bet...
International audienceIn this paper, we give rates of convergence for minimal distances between line...
International audienceIn this paper, we give rates of convergence for minimal distances between line...
International audienceIn this paper, we give estimates of ideal or minimal distances between the dis...
To appear in Annales de l'I.H.P. (2004)We established the rate of convergence in the central limit t...
To appear in Annales de l'I.H.P. (2004)We established the rate of convergence in the central limit t...
AbstractNonuniform convergence rates in the central limit theorem for martingale difference arrays a...
We give optimal convergence rates in the central limit theorem for a large class of martingale diffe...
International audienceWe give optimal convergence rates in the central limit theorem for a large cla...
International audienceWe prove a central limit theorem for stationary multiple (random) fields of ma...
International audienceWe give optimal convergence rates in the central limit theorem for a large cla...
AbstractThe proofs of various central limit theorems for strictly stationary sequences of random var...
In this paper, we study a general central limit theorem and a general law of the iterated logarithm ...
AbstractIn this paper, we give rates of convergence for minimal distances between linear statistics ...