International audienceComputational probabilistic modeling and Bayesian inference has met a great success over the past fifteen years through the development of Monte Carlo methods and the ever increasing performance of computers. Through methods such as Monte Carlo Markov chain and sequential Monte Carlo Bayesian inference effectively combines with Markovian modelling. This approach has been very successful in ecology and agronomy. We analyze the development of this approach applied to a few examples of natural resources management.La modélisation probabiliste et l'inférence bayésienne computationnelles rencontrent un très grand succès depuis une quinzaine d'années grâce au développement des méthodes de Monte Carlo et aux performances touj...
The essence of the Bayesian approach to inference is that all uncertainly is expressed through the s...
The Bayesian approach allows an intuitive way to derive the methods of statistics. Probability is de...
Abstract The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian ...
International audienceComputational probabilistic modeling and Bayesian inference has met a great su...
Bayesian modelling is fluently employed to assess natural ressources. It is associated with Monte Ca...
International audienceBayesian modelling is fluently employed to assess natural ressources. It is as...
Markov chain Monte Carlo (MCMC) methods have been used extensively in statistical physics over the l...
La croissance des plantes en interaction avec l'environnement peut être décrite par des modèles math...
Markov Chain Monte Carlo (MCMC) methods are fundamental tools for sampling highly complex distributi...
This thesis endeavors to study the Bayesian technique of making inferences, which was assisted by th...
International audiencePlant growth is understood through the use of dynamical systems involving many...
The essence of the Bayesian approach to inference is that all uncertainly is expressed through the s...
The application of the Markov chain to modeling agricultural succession is well known. In most cases...
These notes provide an introduction to Markov chain Monte Carlo methods that are useful in both Baye...
The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian theory an...
The essence of the Bayesian approach to inference is that all uncertainly is expressed through the s...
The Bayesian approach allows an intuitive way to derive the methods of statistics. Probability is de...
Abstract The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian ...
International audienceComputational probabilistic modeling and Bayesian inference has met a great su...
Bayesian modelling is fluently employed to assess natural ressources. It is associated with Monte Ca...
International audienceBayesian modelling is fluently employed to assess natural ressources. It is as...
Markov chain Monte Carlo (MCMC) methods have been used extensively in statistical physics over the l...
La croissance des plantes en interaction avec l'environnement peut être décrite par des modèles math...
Markov Chain Monte Carlo (MCMC) methods are fundamental tools for sampling highly complex distributi...
This thesis endeavors to study the Bayesian technique of making inferences, which was assisted by th...
International audiencePlant growth is understood through the use of dynamical systems involving many...
The essence of the Bayesian approach to inference is that all uncertainly is expressed through the s...
The application of the Markov chain to modeling agricultural succession is well known. In most cases...
These notes provide an introduction to Markov chain Monte Carlo methods that are useful in both Baye...
The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian theory an...
The essence of the Bayesian approach to inference is that all uncertainly is expressed through the s...
The Bayesian approach allows an intuitive way to derive the methods of statistics. Probability is de...
Abstract The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian ...