We study the almost sure asymptotic behaviour of stochastic approximation algorithms for the search of zero of a real function. The quadratic strong law of large numbers is extended to the powers greater than one. In other words, the convergence of moments in the almost sure central limit theorem (ASCLT) is established. As a by-product of this convergence, one gets another proof of ASCLT for stochastic approximation algorithms. The convergence result is applied to several examples as estimation of quantiles and recursive estimation of the mean
Stochastic approximation is a common paradigm for many stochastic recursions arising both as algorit...
In this paper, we are interested in the almost sure convergence of randomly truncated stochastic alg...
Stochastic approximations is a rich branch of probability theory and has a wide range of application...
We study the almost sure asymptotic behaviour of stochastic approximation algorithms for the search ...
We prove an almost sure central limit theorem for some multidimensional stochastic algorithms used f...
We prove an almost sure central limit theorem for some multidimensional stochastic algorithms used f...
Under general conditions on the observation processes the almost sure convergence properties of an u...
Stochastic approximation algorithms are iterative procedures which are used to approximate a target ...
We present a sufficient and necessary condition for the convergence of stochastic approximation algo...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We present a sufficient and necessary condition for the convergence of stochastic approximation algo...
We prove the almost sure central limit theorem for martingales via an original approach which uses t...
Stochastic approximation is a common paradigm for many stochastic recursions arising both as algorit...
In this paper, we are interested in the almost sure convergence of randomly truncated stochastic alg...
Stochastic approximations is a rich branch of probability theory and has a wide range of application...
We study the almost sure asymptotic behaviour of stochastic approximation algorithms for the search ...
We prove an almost sure central limit theorem for some multidimensional stochastic algorithms used f...
We prove an almost sure central limit theorem for some multidimensional stochastic algorithms used f...
Under general conditions on the observation processes the almost sure convergence properties of an u...
Stochastic approximation algorithms are iterative procedures which are used to approximate a target ...
We present a sufficient and necessary condition for the convergence of stochastic approximation algo...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We investigate the almost sure asymptotic properties of vector martingale transforms. Assuming some ...
We present a sufficient and necessary condition for the convergence of stochastic approximation algo...
We prove the almost sure central limit theorem for martingales via an original approach which uses t...
Stochastic approximation is a common paradigm for many stochastic recursions arising both as algorit...
In this paper, we are interested in the almost sure convergence of randomly truncated stochastic alg...
Stochastic approximations is a rich branch of probability theory and has a wide range of application...