Many real-life processes are black-box problems, i.e., the internal workings are inaccessible or a closed-form mathematical expression of the likelihood function cannot be defined. For continuous random variables, likelihood-free inference problems can be solved via Approximate Bayesian Computation (ABC). However, an optimal alternative for discrete random variables is yet to be formulated. Here, we aim to fill this research gap. We propose an adjusted population-based MCMC ABC method by re-defining the standard ABC parameters to discrete ones and by introducing a novel Markov kernel that is inspired by differential evolution. We first assess the proposed Markov kernel on a likelihood-based inference problem, namely discovering the underlyi...
International audienceApproximate Bayesian Computation (ABC) methods, also known as likelihood-free ...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Many modern statistical applications involve inference for complicated stochastic models for which t...
Many real-life processes are black-box problems, i.e., the internal workings are inaccessible or a c...
Approximate Bayesian computation (ABC) constitutes a class of computational methods rooted in Bayesi...
2noMarkov Population Models are a widespread formalism, with applications in Systems Biology, Perfor...
Abstract The quest for a more powerful method for model evaluation has inspired Vrugt and Sadegh (20...
The quest for a more powerful method for model evaluation has inspired Vrugt and Sadegh (2013) to in...
The quest for a more powerful method for model evaluation has inspired Vrugt and Sadegh (2013) to in...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
There is an increasing amount of literature focused on Bayesian computational methods to address pr...
Also known as likelihood-free methods, approximate Bayesian computational (ABC) methods have appeare...
Many modern statistical applications involve inference for complicated stochastic models for which t...
Approximate Bayesian Computation has been successfully used in population genetics models to bypass ...
Approximate Bayesian computation (ABC) is a popular technique for analysing data for complex models ...
International audienceApproximate Bayesian Computation (ABC) methods, also known as likelihood-free ...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Many modern statistical applications involve inference for complicated stochastic models for which t...
Many real-life processes are black-box problems, i.e., the internal workings are inaccessible or a c...
Approximate Bayesian computation (ABC) constitutes a class of computational methods rooted in Bayesi...
2noMarkov Population Models are a widespread formalism, with applications in Systems Biology, Perfor...
Abstract The quest for a more powerful method for model evaluation has inspired Vrugt and Sadegh (20...
The quest for a more powerful method for model evaluation has inspired Vrugt and Sadegh (2013) to in...
The quest for a more powerful method for model evaluation has inspired Vrugt and Sadegh (2013) to in...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
There is an increasing amount of literature focused on Bayesian computational methods to address pr...
Also known as likelihood-free methods, approximate Bayesian computational (ABC) methods have appeare...
Many modern statistical applications involve inference for complicated stochastic models for which t...
Approximate Bayesian Computation has been successfully used in population genetics models to bypass ...
Approximate Bayesian computation (ABC) is a popular technique for analysing data for complex models ...
International audienceApproximate Bayesian Computation (ABC) methods, also known as likelihood-free ...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Many modern statistical applications involve inference for complicated stochastic models for which t...