This paper shows how neural networks may be used to approximate the limited information posterior mean of a simulable model. Because the model is simulable, training and testing samples may be generated with sizes large enough to train well a net that is large enough, in terms of number of hidden layers and neurons, to learn the limited information posterior mean with good accuracy. The output of the net can be used as an estimator of the parameter, or, following Jiang et al. (2015), as an input to subsequent classical or Bayesian indirect inference estimation. Targeting the limited information posterior mean using neural nets is simpler, faster, and more successful than is targeting the full information posterior mean. Code to replicate th...
In Hoogerheide, Kaashoek and Van Dijk (2002) the class of neural networksampling methods is introduc...
Mechanistic models of single-neuron dynamics have been extensively studied in computational neurosci...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
For simulable models, neural networks are used to approximate the limited information posterior mean...
Neural nets have become popular to accelerate parameter inferences, especially for the upcoming gene...
The performance of Monte Carlo integration methods like importance sampling or Markov Chain Monte Ca...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Conventional training methods for neural networks involve starting al a random location in the solut...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
Approximate marginal Bayesian computation and inference are developed for neural network models. The...
Bayesian statistical inference provides a principled framework for linking mechanistic models of neu...
Approximate Bayesian Computation (ABC) provides methods for Bayesian inference in simulation-based s...
Embodied agents, be they animals or robots, acquire information about the world through their senses...
RÉSUMÉ: Les réseaux de neurones profonds sont capables de résoudre de nombreux problèmes d'apprentis...
In Hoogerheide, Kaashoek and Van Dijk (2002) the class of neural networksampling methods is introduc...
Mechanistic models of single-neuron dynamics have been extensively studied in computational neurosci...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
For simulable models, neural networks are used to approximate the limited information posterior mean...
Neural nets have become popular to accelerate parameter inferences, especially for the upcoming gene...
The performance of Monte Carlo integration methods like importance sampling or Markov Chain Monte Ca...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Conventional training methods for neural networks involve starting al a random location in the solut...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
AbstractWe describe two specific examples of neural-Bayesian approaches for complex modeling tasks: ...
Approximate marginal Bayesian computation and inference are developed for neural network models. The...
Bayesian statistical inference provides a principled framework for linking mechanistic models of neu...
Approximate Bayesian Computation (ABC) provides methods for Bayesian inference in simulation-based s...
Embodied agents, be they animals or robots, acquire information about the world through their senses...
RÉSUMÉ: Les réseaux de neurones profonds sont capables de résoudre de nombreux problèmes d'apprentis...
In Hoogerheide, Kaashoek and Van Dijk (2002) the class of neural networksampling methods is introduc...
Mechanistic models of single-neuron dynamics have been extensively studied in computational neurosci...
The solution to many science and engineering problems includes identifying the minimum or maximum of...