A new concept of (normalized) convergence of random variables is introduced. This convergence is preserved under Lipschitz transformations, follows from convergence in mean and itself implies convergence in probability. If a sequence of random variables satisfies a limit theorem then it is a normalized convergent sequence. The introduced concept is applied to the convergence rate study of a statistical approach in stochastic optimization
In the present paper we prove a general theorem which gives the rates of convergence in distribution...
The paper studies stochastic optimization (programming) problems with compound functions containing ...
We study the convergence rate of randomly truncated stochastic algorithms, which consist i...
A new concept of (normalized) convergence of random variables is introduced. The normalized converge...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
Abstract. The paper extends certain stochastic convergence of sequences of Rk-valued random variable...
AbstractIn this paper we continue our investigation of recent notions of λ-statistical convergence i...
summary:In this paper the ideas of three types of statistical convergence of a sequence of random va...
Let (Xn)n[epsilon] be a sequence of real, independent, not necessarily identically distributed rando...
Abstract. This note gives the convergence rate in the central limit theorem and the random central l...
The definition of weighted statistical convergence was first introduced by Karakaya and Chishti (200...
Stochastic Convergence, Second Edition covers the theoretical aspects of random power series dealing...
summary:Continuous convergence and epi-convergence of sequences of random functions are crucial assu...
Limit theorems for various random variables occurring in risk theory have been established in [6]. B...
AbstractLet (Xn)nϵN be a sequence of real, independent, not necessarily identically distributed rand...
In the present paper we prove a general theorem which gives the rates of convergence in distribution...
The paper studies stochastic optimization (programming) problems with compound functions containing ...
We study the convergence rate of randomly truncated stochastic algorithms, which consist i...
A new concept of (normalized) convergence of random variables is introduced. The normalized converge...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
Abstract. The paper extends certain stochastic convergence of sequences of Rk-valued random variable...
AbstractIn this paper we continue our investigation of recent notions of λ-statistical convergence i...
summary:In this paper the ideas of three types of statistical convergence of a sequence of random va...
Let (Xn)n[epsilon] be a sequence of real, independent, not necessarily identically distributed rando...
Abstract. This note gives the convergence rate in the central limit theorem and the random central l...
The definition of weighted statistical convergence was first introduced by Karakaya and Chishti (200...
Stochastic Convergence, Second Edition covers the theoretical aspects of random power series dealing...
summary:Continuous convergence and epi-convergence of sequences of random functions are crucial assu...
Limit theorems for various random variables occurring in risk theory have been established in [6]. B...
AbstractLet (Xn)nϵN be a sequence of real, independent, not necessarily identically distributed rand...
In the present paper we prove a general theorem which gives the rates of convergence in distribution...
The paper studies stochastic optimization (programming) problems with compound functions containing ...
We study the convergence rate of randomly truncated stochastic algorithms, which consist i...