We discuss the functional central limit theorem (FCLT) for the empirical process of a moving-average stationary sequence with long memory. The cases of one-sided and double-sided moving averages are discussed. In the case of one-sided (causal) moving average, the FCLT is obtained under weak conditions of smoothness of the distribution and the existence of (2+δ)-moment of i.i.d. innovations, by using the martingale difference decomposition due to Ho and Hsing (1996, Ann. Statist. 24, 992–1014). In the case of double-sided moving average, the proof of the FCLT is based on an asymptotic expansion of the bivariate probability density
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
Abstract—The central limit theorem is proved within the framework of the functional approach for si...
We discuss the functional central limit theorem (FCLT) for the empirical process of a moving-average...
This paper establishes a central limit theorem (CLT) for empirical processes indexed by smooth funct...
Abstract. We prove a functional central limit theorem for the empirical pro-cess of a stationary pro...
Let {Xt,t≥1} be a moving average process defined byXt = ∞∑j=0bjξt-j , where {bj,j≥0} is a sequence o...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
We establish a functional central limit theorem for the empirical process of bivariate stationary lo...
We establish a functional central limit theorem for the empirical process of bivariate stationary lo...
A random functional central limit theorem is obtained for a stationary linear process of the form , ...
We establish a functional central limit theorem for the empirical process of bivariate stationary lo...
AbstractLet X̄ denote the mean of a consecutive sequence of length n from an autoregression or movin...
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
Abstract—The central limit theorem is proved within the framework of the functional approach for si...
We discuss the functional central limit theorem (FCLT) for the empirical process of a moving-average...
This paper establishes a central limit theorem (CLT) for empirical processes indexed by smooth funct...
Abstract. We prove a functional central limit theorem for the empirical pro-cess of a stationary pro...
Let {Xt,t≥1} be a moving average process defined byXt = ∞∑j=0bjξt-j , where {bj,j≥0} is a sequence o...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
The central limit theorem is, with the strong law of large numbers, one of the two fundamental limit...
We establish a functional central limit theorem for the empirical process of bivariate stationary lo...
We establish a functional central limit theorem for the empirical process of bivariate stationary lo...
A random functional central limit theorem is obtained for a stationary linear process of the form , ...
We establish a functional central limit theorem for the empirical process of bivariate stationary lo...
AbstractLet X̄ denote the mean of a consecutive sequence of length n from an autoregression or movin...
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
This paper shows how the modern machinery for generating abstract empirical central limit theorems c...
Abstract—The central limit theorem is proved within the framework of the functional approach for si...