This paper establishes a central limit theorem (CLT) for empirical processes indexed by smooth functions. The underlying random variables may be temporally dependent and non-identically distributed. In particular, the CLT holds for near epoch dependent (i.e., functions of mixing processes) triangular arrays, which include strong mixing arrays, among others. The results apply to classes of functions that have series expansions. The proof of the CLT is particularly simple; no chaining argument is required. The results can be used to establish the asymptotic normality of semiparametric estimators in time series contexts. An example is provided
International audienceWe prove a central limit theorem for linear triangular arrays under weak depen...
International audienceIn this work, a generalised version of the central limit theorem is proposed f...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
AbstractThis paper establishes a central limit theorem (CLT) for empirical processes indexed by smoo...
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
This paper presents central limit theorems for triangular arrays of mixingale and near-epoch-depende...
In this article, a general central limit theorem for a triangular array of m-dependent random varia...
AbstractThis article is motivated by a central limit theorem of Ibragimov for strictly stationary ra...
International audienceLet $(U_n(t))_{t\in\R^d}$ be the empirical process associated to an $\R^d$-val...
We discuss the functional central limit theorem (FCLT) for the empirical process of a moving-average...
Building on work of McLeish, we present a number of invariance principles for doubly indexed arrays ...
AbstractFunctional central limit theorems for triangular arrays of rowwise independent stochastic pr...
International audienceIn this work, a generalised version of the central limit theorem is proposed f...
International audienceWe prove a central limit theorem for the d-dimensional distribution function o...
AbstractWe prove a central limit theorem for the d-dimensional distribution function of a class of s...
International audienceWe prove a central limit theorem for linear triangular arrays under weak depen...
International audienceIn this work, a generalised version of the central limit theorem is proposed f...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
AbstractThis paper establishes a central limit theorem (CLT) for empirical processes indexed by smoo...
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
This paper presents central limit theorems for triangular arrays of mixingale and near-epoch-depende...
In this article, a general central limit theorem for a triangular array of m-dependent random varia...
AbstractThis article is motivated by a central limit theorem of Ibragimov for strictly stationary ra...
International audienceLet $(U_n(t))_{t\in\R^d}$ be the empirical process associated to an $\R^d$-val...
We discuss the functional central limit theorem (FCLT) for the empirical process of a moving-average...
Building on work of McLeish, we present a number of invariance principles for doubly indexed arrays ...
AbstractFunctional central limit theorems for triangular arrays of rowwise independent stochastic pr...
International audienceIn this work, a generalised version of the central limit theorem is proposed f...
International audienceWe prove a central limit theorem for the d-dimensional distribution function o...
AbstractWe prove a central limit theorem for the d-dimensional distribution function of a class of s...
International audienceWe prove a central limit theorem for linear triangular arrays under weak depen...
International audienceIn this work, a generalised version of the central limit theorem is proposed f...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...