A discrete time stochastic model for a multiagent system given in terms of a large collection of interacting Markov chains is studied. The evolution of the interacting particles is described through a time inhomogeneous transition probability kernel that depends on the 'gradient' of the potential field. The particles, in turn, dynamically modify the potential field through their cumulative input. Interacting Markov processes of the above form have been suggested as models for active biological transport in response to external stimulus such as a chemical gradient. One of the basic mathematical challenges is to develop a general theory of stability for such interacting Markovian systems and for the corresponding nonlinear Markov processes th...
Agent-based stochastic models for finite populations have recently received much attention in the ga...
This paper studies the co-evolution of networks and play in the context of finite population potenti...
We introduce Markov Decision Evolutionary Games with N players, in which each individual in a large ...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
We propose a discrete-time stochastic dynamics for a system of many interacting agents. At each time...
In this article we study a class of self interacting Markov chain models. We propose a novel theoret...
We study long time behavior of a discrete time weakly interacting particle system, and the correspon...
A Markovian Agent Model (MAM) is a stochastic model that provides a flexible, powerful and scalable...
The study of large interacting particle systems has broad applications in many scientific fields suc...
We introduce Markov Decision Evolutionary Games with N players, in which each individual in a large ...
This self-contained text develops a Markov chain approach that makes the rigorous analysis of a clas...
We propose a discrete-time stochastic dynamics for a system of many interacting agents. At each time...
Studying dynamical phenomena in finite populations often involves Markov processes of significant ma...
Agent-based stochastic models for finite populations have recently received much attention in the ga...
This paper studies the co-evolution of networks and play in the context of finite population potenti...
We introduce Markov Decision Evolutionary Games with N players, in which each individual in a large ...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
We propose a discrete-time stochastic dynamics for a system of many interacting agents. At each time...
In this article we study a class of self interacting Markov chain models. We propose a novel theoret...
We study long time behavior of a discrete time weakly interacting particle system, and the correspon...
A Markovian Agent Model (MAM) is a stochastic model that provides a flexible, powerful and scalable...
The study of large interacting particle systems has broad applications in many scientific fields suc...
We introduce Markov Decision Evolutionary Games with N players, in which each individual in a large ...
This self-contained text develops a Markov chain approach that makes the rigorous analysis of a clas...
We propose a discrete-time stochastic dynamics for a system of many interacting agents. At each time...
Studying dynamical phenomena in finite populations often involves Markov processes of significant ma...
Agent-based stochastic models for finite populations have recently received much attention in the ga...
This paper studies the co-evolution of networks and play in the context of finite population potenti...
We introduce Markov Decision Evolutionary Games with N players, in which each individual in a large ...