The majority of the existing work on random vector functional link networks (RVFLNs) is not scalable for data stream analytics because they work under a batch learning scenario and lack a self-organizing property. A novel RVLFN, namely the parsimonious random vector functional link network (pRVFLN), is proposed in this paper. pRVFLN adopts a fully flexible and adaptive working principle where its network structure can be configured from scratch and can be automatically generated, pruned and recalled from data streams. pRVFLN is capable of selecting and deselecting input attributes on the fly as well as capable of extracting important training samples for model updates. In addition, pRVFLN introduces a non-parametric type of hidden node whic...
In this paper, a new algorithm for on-line learning of Random Vector Functional-Link neural network ...
Random Forest is one of the most popular Machine learning algorithms. It is an ensemble of decision ...
This letter identifies original independent works in the domain of randomization-based feedforward n...
The majority of the existing work on random vector functional link networks (RVFLNs) is not scalable...
© 2017 IEEE. Randomized neural network (RNN) is a highly feasible solution in the era of big data be...
Deep neural networks have shown their promise in recent years with their state-of-the-art results. ...
© 2019 Elsevier Ltd With the direct input–output connections, a random vector functional link (RVFL)...
Traditionally, random vector functional link (RVFL) is a randomization based neural networks has be...
Deep learning has been extremely successful in recent years. However, it should be noted that neural...
Random Vector Functional-link (RVFL) networks, as a class of random learner models, have received ca...
The Random Vector Functional Link Neural Network (RVFLNN) enables fast learning through a random sel...
Random Vector Functional Link (RVFL) Networks have received a lot of attention due to the fast train...
Random vector functional-link (RVFL) networks are randomized multilayer perceptrons with a single hi...
The deep RVFLs are inspired by the principles of the Random Vector Functional Link (RVFL) neural net...
AbstractOne of the main characteristics in many real-world big data scenarios is their distributed n...
In this paper, a new algorithm for on-line learning of Random Vector Functional-Link neural network ...
Random Forest is one of the most popular Machine learning algorithms. It is an ensemble of decision ...
This letter identifies original independent works in the domain of randomization-based feedforward n...
The majority of the existing work on random vector functional link networks (RVFLNs) is not scalable...
© 2017 IEEE. Randomized neural network (RNN) is a highly feasible solution in the era of big data be...
Deep neural networks have shown their promise in recent years with their state-of-the-art results. ...
© 2019 Elsevier Ltd With the direct input–output connections, a random vector functional link (RVFL)...
Traditionally, random vector functional link (RVFL) is a randomization based neural networks has be...
Deep learning has been extremely successful in recent years. However, it should be noted that neural...
Random Vector Functional-link (RVFL) networks, as a class of random learner models, have received ca...
The Random Vector Functional Link Neural Network (RVFLNN) enables fast learning through a random sel...
Random Vector Functional Link (RVFL) Networks have received a lot of attention due to the fast train...
Random vector functional-link (RVFL) networks are randomized multilayer perceptrons with a single hi...
The deep RVFLs are inspired by the principles of the Random Vector Functional Link (RVFL) neural net...
AbstractOne of the main characteristics in many real-world big data scenarios is their distributed n...
In this paper, a new algorithm for on-line learning of Random Vector Functional-Link neural network ...
Random Forest is one of the most popular Machine learning algorithms. It is an ensemble of decision ...
This letter identifies original independent works in the domain of randomization-based feedforward n...