We propose a hierarchical full Bayesian model for radial basis networks. This model treats the model dimension (number of neurons), model parameters, regularization parameters, and noise parameters as unknown random variables. We develop a reversible-jump Markov chain Monte Carlo (MCMC) method to perform the Bayesian computation. We find that the results obtained using this method are not only better than the ones reported previously, but also appear to be robust with respect to the prior specification. In addition, we propose a novel and computationally efficient reversible-jump MCMC simulated annealing algorithm to optimize neural networks. This algorithm enables us to maximize the joint posterior distribution of the network parameters an...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
. It is shown that Bayesian training of backpropagation neural networks can feasibly be performed by...
For autonomous robots, we propose an approximate model-based Bayesian reinforcement learning (MB-BRL...
We propose a hierarchical full Bayesian model for radial basis networks. This model treats the model...
We propose a hierarchical full Bayesian model for radial basis networks. This model treats the model...
We propose a novel reversible jump Markov chain Monte Carlo (MCMC) simulated annealing algorithm to ...
In this paper, we propose a full Bayesian model for neural networks. This model treats the model dim...
In this paper, we propose a full Bayesian model for neural networks. This model treats the model dim...
A Bayesian framework for the analysis of radial basis functions (RBF) is proposed which readily acco...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
A Bayesian framework for the analysis of radial basis functions (RBF) is proposed that accommodates ...
Random vector functional-link (RVFL) networks are randomized multilayer perceptrons with a single hi...
It is well known in the literature that the problem of learning the structure of Bayesian networks i...
This thesis puts forward methods for computing local robustness of probabilistic neural networks, s...
Conventional training methods for neural networks involve starting al a random location in the solut...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
. It is shown that Bayesian training of backpropagation neural networks can feasibly be performed by...
For autonomous robots, we propose an approximate model-based Bayesian reinforcement learning (MB-BRL...
We propose a hierarchical full Bayesian model for radial basis networks. This model treats the model...
We propose a hierarchical full Bayesian model for radial basis networks. This model treats the model...
We propose a novel reversible jump Markov chain Monte Carlo (MCMC) simulated annealing algorithm to ...
In this paper, we propose a full Bayesian model for neural networks. This model treats the model dim...
In this paper, we propose a full Bayesian model for neural networks. This model treats the model dim...
A Bayesian framework for the analysis of radial basis functions (RBF) is proposed which readily acco...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
A Bayesian framework for the analysis of radial basis functions (RBF) is proposed that accommodates ...
Random vector functional-link (RVFL) networks are randomized multilayer perceptrons with a single hi...
It is well known in the literature that the problem of learning the structure of Bayesian networks i...
This thesis puts forward methods for computing local robustness of probabilistic neural networks, s...
Conventional training methods for neural networks involve starting al a random location in the solut...
We address the complex problem of sequential Bayesian learning and model selection for neural networ...
. It is shown that Bayesian training of backpropagation neural networks can feasibly be performed by...
For autonomous robots, we propose an approximate model-based Bayesian reinforcement learning (MB-BRL...