Randomness has always been present in one or other form in Machine Learning (ML) models. The last few years have seen a change of role in the use of randomness, which is no longer a specific and accessory improvement in very particular aspects of a model, but the main theoretical basis that supports some ML methods, e.g., the well-known random forests. In the Neural Network (NN) area, since its origins, randomness gave rise to a rich set of models, which have been recently exploited especially for efficiency aims. However, the bias induced by the use NN with random weights deserves further analysis, especially in the novel advances in the fields of deep NNs, dynamical systems (Recurrent NN), and NNs for learning in structured domains
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
Random Neural Networks (RNNs) area classof Neural Networks (NNs) that can also be seen as a specific...
Regularization plays an important role in machine learning systems. We propose a novel methodology f...
Randomness has always been present in one or other form in Machine Learning (ML) models. The last fe...
Neural Networks (NNs) with random weights represent nowadays a topic of consolidated use in the Mach...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
This letter identifies original independent works in the domain of randomization-based feedforward n...
In this paper, we introduce and evaluate a novelmethod, called random brains, for producing neural n...
Evaluation of generative models is mostly based on the comparison between the estimated distribution...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
Random Neural Networks (RNNs) area classof Neural Networks (NNs) that can also be seen as a specific...
Regularization plays an important role in machine learning systems. We propose a novel methodology f...
Randomness has always been present in one or other form in Machine Learning (ML) models. The last fe...
Neural Networks (NNs) with random weights represent nowadays a topic of consolidated use in the Mach...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
This letter identifies original independent works in the domain of randomization-based feedforward n...
In this paper, we introduce and evaluate a novelmethod, called random brains, for producing neural n...
Evaluation of generative models is mostly based on the comparison between the estimated distribution...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
Random Neural Networks (RNNs) area classof Neural Networks (NNs) that can also be seen as a specific...
Regularization plays an important role in machine learning systems. We propose a novel methodology f...