The evaluation of the free energy of a stochastic model is considered a significant issue in various fields of physics and machine learning. However, the exact free energy evaluation is computationally infeasible because the free energy expression includes an intractable partition function. Annealed importance sampling (AIS) is a type of importance sampling based on the Markov chain Monte Carlo method that is similar to a simulated annealing and can effectively approximate the free energy. This study proposes an AIS-based approach, which is referred to as marginalized AIS (mAIS). The statistical efficiency of mAIS is investigated in detail based on theoretical and numerical perspectives. Based on the investigation, it is proved that mAIS is...
Despite the development of sophisticated techniques such as sequential Monte Carlo, importance sampl...
Building on the work of Iftimie et al., Boltzmann sampling of an approximate potential (the 'referen...
Importance sampling can be highly efficient if a good importance sampling density is constructed. Al...
In this paper, we investigate restricted Boltzmann machines (RBMs) from the exponential family persp...
Annealed Importance Sampling (AIS) is a popular algorithm used to estimates the intractable marginal...
International audienceBecause of their multimodality, mixture posterior distributions are difficult ...
One of the most important problems in statistical mechanics is the measurement of free energies, th...
Normalizing flows are tractable density models that can approximate complicated target distributions...
Restricted Boltzmann machines (RBMs) constitute one of the main models for machine statistic...
The marginal likelihood, or model evidence, is a key quantity in Bayesian parameter estimation and m...
The article surveys and extends variational formulations of the thermodynamic free energy and discus...
CITATION: Cameron, S. A.; Eggers, H. C. & Kroon, S. 2019. Stochastic gradient annealed importance sa...
The population annealing algorithm introduced by Hukushima and Iba is described. Population annealin...
This thesis presents work which uses Machine Learning techniques in a variety of sampling situations...
. Simulated annealing --- moving from a tractable distribution to a distribution of interest via a s...
Despite the development of sophisticated techniques such as sequential Monte Carlo, importance sampl...
Building on the work of Iftimie et al., Boltzmann sampling of an approximate potential (the 'referen...
Importance sampling can be highly efficient if a good importance sampling density is constructed. Al...
In this paper, we investigate restricted Boltzmann machines (RBMs) from the exponential family persp...
Annealed Importance Sampling (AIS) is a popular algorithm used to estimates the intractable marginal...
International audienceBecause of their multimodality, mixture posterior distributions are difficult ...
One of the most important problems in statistical mechanics is the measurement of free energies, th...
Normalizing flows are tractable density models that can approximate complicated target distributions...
Restricted Boltzmann machines (RBMs) constitute one of the main models for machine statistic...
The marginal likelihood, or model evidence, is a key quantity in Bayesian parameter estimation and m...
The article surveys and extends variational formulations of the thermodynamic free energy and discus...
CITATION: Cameron, S. A.; Eggers, H. C. & Kroon, S. 2019. Stochastic gradient annealed importance sa...
The population annealing algorithm introduced by Hukushima and Iba is described. Population annealin...
This thesis presents work which uses Machine Learning techniques in a variety of sampling situations...
. Simulated annealing --- moving from a tractable distribution to a distribution of interest via a s...
Despite the development of sophisticated techniques such as sequential Monte Carlo, importance sampl...
Building on the work of Iftimie et al., Boltzmann sampling of an approximate potential (the 'referen...
Importance sampling can be highly efficient if a good importance sampling density is constructed. Al...