Consider a generalized time-dependent Pólya urn process defined as follows. Let d∈N be the number of urns/colors. At each time n, we distribute σn balls randomly to the d urns, proportionally to f, where f is a valid reinforcement function. We consider a general class of positive reinforcement functions R assuming some monotonicity and growth condition. The class R includes convex functions and the classical case f(x)=xα, α>1. The novelty of the paper lies in extending stochastic approximation techniques to the d-dimensional case and proving that eventually the process will fixate at some random urn and the other urns will not receive any balls any more
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We collect, survey and develop methods of (one-dimensional) stochastic approximation in a framework ...
This paper extend the link between stochastic approximation and randomized urn models inves-tigated ...
Consider a generalized time-dependent Pólya urn process defined as follows. Let d∈N be the number of...
Consider a generalized time-dependent Pólya urn process defined as follows. Let d∈N be the number of...
The Polya urn is the paradigmatic example of a reinforced stochastic process. It leads to a random (...
A strong law is obtained for the process {Xn} that represents the proportion of balls of each colour...
This paper extends the link between stochastic approximation (SA) theory and randomized urn models d...
We introduce a class of reinforcement models where, at each time step t, one ¿rst chooses a random s...
International audienceThis paper extends the link between stochastic approximation (SA) theory and r...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We consider a variant of the randomly reinforced urn where more balls can be simultaneously drawn ou...
We introduce a class of reinforcement models where, at each time step t, one ¿rst chooses a random s...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We collect, survey and develop methods of (one-dimensional) stochastic approximation in a framework ...
This paper extend the link between stochastic approximation and randomized urn models inves-tigated ...
Consider a generalized time-dependent Pólya urn process defined as follows. Let d∈N be the number of...
Consider a generalized time-dependent Pólya urn process defined as follows. Let d∈N be the number of...
The Polya urn is the paradigmatic example of a reinforced stochastic process. It leads to a random (...
A strong law is obtained for the process {Xn} that represents the proportion of balls of each colour...
This paper extends the link between stochastic approximation (SA) theory and randomized urn models d...
We introduce a class of reinforcement models where, at each time step t, one ¿rst chooses a random s...
International audienceThis paper extends the link between stochastic approximation (SA) theory and r...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We consider a variant of the randomly reinforced urn where more balls can be simultaneously drawn ou...
We introduce a class of reinforcement models where, at each time step t, one ¿rst chooses a random s...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We introduce a class of discrete time stochastic processes generated by interacting systems of reinf...
We collect, survey and develop methods of (one-dimensional) stochastic approximation in a framework ...
This paper extend the link between stochastic approximation and randomized urn models inves-tigated ...