Training Artificial Neural Networks (ANNs) is a non-trivial task. In the last years, there has been a growing interest in the academic community in understanding how those structures work and what strategies can be adopted to improve the efficiency of the trained models. Thus, the novel approach proposed in this paper is the inclusion of the entropy metric to analyse the training process. Herein, indeed, an investigation on the accuracy computation process in relation to the entropy of the intra-layers’ weights of multilayer perceptron (MLP) networks is proposed. From the analysis conducted on two well-known datasets with several configurations of the ANNs, we discovered that there is a connection between those two metrics (i.e., accuracy a...
Mutual Information (MI) has been widely used as a loss regularizer for training neural networks. Thi...
to be presented at ICML2022 in Baltimore, MDInternational audienceMutual Information (MI) has been w...
Deep learning has proven to be an important element of modern data processing technology, which has ...
In recent years, multilayer feedforward neural networks (NN) have been shown to be very effective to...
Improving the efficiency and convergence rate of the Multilayer Backpropagation Neural Network Algor...
Although neural networks can solve very complex machine-learning problems, the theoretical reason fo...
Neural networks have dramatically increased our capacity to learn from large, high-dimensional datas...
A theory of neural networks (NNs) built upon collective variables would provide scientists with the ...
AbstractImproving the efficiency and convergence rate of the Multilayer Backpropagation Neural Netwo...
Entropy is a fundamental concept in the field of information theory. During measurement, conventiona...
In this paper, entropy term is used in the learning phase of a neural network. As learning progresse...
Recently, there is a growing interest in applying Transfer Entropy (TE) in quantifying the effective...
Measuring the predictability and complexity of time series using entropy is essential tool designing...
Entropy models the added information associated to data uncertainty, proving that stochasticity is n...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
Mutual Information (MI) has been widely used as a loss regularizer for training neural networks. Thi...
to be presented at ICML2022 in Baltimore, MDInternational audienceMutual Information (MI) has been w...
Deep learning has proven to be an important element of modern data processing technology, which has ...
In recent years, multilayer feedforward neural networks (NN) have been shown to be very effective to...
Improving the efficiency and convergence rate of the Multilayer Backpropagation Neural Network Algor...
Although neural networks can solve very complex machine-learning problems, the theoretical reason fo...
Neural networks have dramatically increased our capacity to learn from large, high-dimensional datas...
A theory of neural networks (NNs) built upon collective variables would provide scientists with the ...
AbstractImproving the efficiency and convergence rate of the Multilayer Backpropagation Neural Netwo...
Entropy is a fundamental concept in the field of information theory. During measurement, conventiona...
In this paper, entropy term is used in the learning phase of a neural network. As learning progresse...
Recently, there is a growing interest in applying Transfer Entropy (TE) in quantifying the effective...
Measuring the predictability and complexity of time series using entropy is essential tool designing...
Entropy models the added information associated to data uncertainty, proving that stochasticity is n...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
Mutual Information (MI) has been widely used as a loss regularizer for training neural networks. Thi...
to be presented at ICML2022 in Baltimore, MDInternational audienceMutual Information (MI) has been w...
Deep learning has proven to be an important element of modern data processing technology, which has ...