Bayesian learning theory and evolutionary theory both formalize adaptive competition dynamics in possibly high-dimensional, varying, and noisy environments. What do they have in common and how do they differ? In this paper, we discuss structural and dynamical analogies and their limits, both at a computational and an algorithmic-mechanical level. We point out mathematical equivalences between their basic dynamical equations, generalizing the isomorphism between Bayesian update and replicator dynamics. We discuss how these mechanisms provide analogous answers to the challenge of adapting to stochastically changing environments at multiple timescales. We elucidate an algorithmic equivalence between a sampling approximation, particle filters, ...
In this work, we deal with the problem of creating a model that describes a population of agents und...
This paper introduces a variational formulation of natural selection, paying special attention to th...
Evolutionary game dynamics is one of the most fruitful frameworks for studying evolution in differen...
In this thesis we establish a theory of evolutionary dynamics that accounts for the following requir...
The processes of adaptation in a multi-agent system consist of two complementary phases: 1) learnin...
We consider a two timescale model of learning by economic agents wherein active or 'ontogenetic' lea...
The present thesis considers two biologically significant processes: the evolution of populations of...
Learning and evolution are adaptive or “backward-looking” models of social and biological systems. L...
Darwinian dynamics based on mutation and selection from the core of mathematical models for adaptati...
International audienceA distinctive signature of living systems is Darwinian evolution, that is, a p...
In order to understand the development of non-genetically encoded actions during an animal's lifespa...
Evolutionary game theory and theoretical population genetics are two different fields sharing many c...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
In a recent series of papers [7, 8, 6] a surprisingly strong connection was discovered between stand...
This paper presents a tight relationship between evolutionary game theory and distributed intelligen...
In this work, we deal with the problem of creating a model that describes a population of agents und...
This paper introduces a variational formulation of natural selection, paying special attention to th...
Evolutionary game dynamics is one of the most fruitful frameworks for studying evolution in differen...
In this thesis we establish a theory of evolutionary dynamics that accounts for the following requir...
The processes of adaptation in a multi-agent system consist of two complementary phases: 1) learnin...
We consider a two timescale model of learning by economic agents wherein active or 'ontogenetic' lea...
The present thesis considers two biologically significant processes: the evolution of populations of...
Learning and evolution are adaptive or “backward-looking” models of social and biological systems. L...
Darwinian dynamics based on mutation and selection from the core of mathematical models for adaptati...
International audienceA distinctive signature of living systems is Darwinian evolution, that is, a p...
In order to understand the development of non-genetically encoded actions during an animal's lifespa...
Evolutionary game theory and theoretical population genetics are two different fields sharing many c...
This paper introduces a new model, i.e. state-coupled replicator dynamics, expanding the link betwee...
In a recent series of papers [7, 8, 6] a surprisingly strong connection was discovered between stand...
This paper presents a tight relationship between evolutionary game theory and distributed intelligen...
In this work, we deal with the problem of creating a model that describes a population of agents und...
This paper introduces a variational formulation of natural selection, paying special attention to th...
Evolutionary game dynamics is one of the most fruitful frameworks for studying evolution in differen...