Random vector functional-link (RVFL) networks are randomized multilayer perceptrons with a single hidden layer and a linear output layer, which can be trained by solving a linear modeling problem. In particular, they are generally trained using a closed-form solution of the (regularized) least-squares approach. This paper introduces several alternative strategies for performing full Bayesian inference (BI) of RVFL networks. Distinct from standard or classical approaches, our proposed Bayesian training algorithms allow to derive an entire probability distribution over the optimal output weights of the network, instead of a single pointwise estimate according to some given criterion (e.g., least-squares). This provides several known advantage...
The Random Vector Functional Link Neural Network (RVFLNN) enables fast learning through a random sel...
. Training neural networks for predicting conditional probabilities can be accelerated considerably ...
One of the most important foundational challenge of Statistical relational learning is the developme...
Neural networks (NNs) with random weights are an interesting alternative to conventional NNs that ar...
The deep RVFLs are inspired by the principles of the Random Vector Functional Link (RVFL) neural net...
© 2019 Elsevier Ltd With the direct input–output connections, a random vector functional link (RVFL)...
Training neural networks for predicting conditional probability densities can be accelerated conside...
Deep learning has been extremely successful in recent years. However, it should be noted that neural...
The majority of the existing work on random vector functional link networks (RVFLNs) is not scalable...
Traditionally, random vector functional link (RVFL) is a randomization based neural networks has be...
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...
Random Vector Functional-link (RVFL) networks, as a class of random learner models, have received ca...
. Training neural networks for predicting conditional probabilities can be accelerated considerably ...
AbstractOne of the main characteristics in many real-world big data scenarios is their distributed n...
The Random Vector Functional Link Neural Network (RVFLNN) enables fast learning through a random sel...
. Training neural networks for predicting conditional probabilities can be accelerated considerably ...
One of the most important foundational challenge of Statistical relational learning is the developme...
Neural networks (NNs) with random weights are an interesting alternative to conventional NNs that ar...
The deep RVFLs are inspired by the principles of the Random Vector Functional Link (RVFL) neural net...
© 2019 Elsevier Ltd With the direct input–output connections, a random vector functional link (RVFL)...
Training neural networks for predicting conditional probability densities can be accelerated conside...
Deep learning has been extremely successful in recent years. However, it should be noted that neural...
The majority of the existing work on random vector functional link networks (RVFLNs) is not scalable...
Traditionally, random vector functional link (RVFL) is a randomization based neural networks has be...
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...
Random Vector Functional-link (RVFL) networks, as a class of random learner models, have received ca...
. Training neural networks for predicting conditional probabilities can be accelerated considerably ...
AbstractOne of the main characteristics in many real-world big data scenarios is their distributed n...
The Random Vector Functional Link Neural Network (RVFLNN) enables fast learning through a random sel...
. Training neural networks for predicting conditional probabilities can be accelerated considerably ...
One of the most important foundational challenge of Statistical relational learning is the developme...