In this paper, a novel data-driven method for weight initialization of Multilayer Perceptrons and Convolutional Neural Networks based on discriminant learning is proposed. The approach relaxes some of the limitations of competing data-driven methods, including unimodality assumptions, limitations on the architectures related to limited maximal dimensionalities of the corresponding projection spaces, as well as limitations related to high computational requirements due to the need of eigendecomposition on high-dimensional data. We also consider assumptions of the method on the data and propose a way to account for them in a form of a new normalization layer. The experiments on three large-scale image datasets show improved accuracy of the tr...
During training one of the most important factor is weight initialization that affects the training ...
Neural network is a machine learning algorithm that has been studied since the mid-1900s, Recently, ...
Abstract. A method for training of an ML network for classification has been proposed by us in [3,4]...
In this paper, a novel data-driven method for weight initialization of Multilayer Perceptrons and Co...
A new method of initializing the weights in deep neural networks is proposed. The method follows two...
The importance of weight initialization when building a deep learning model is often underappreciate...
Proper initialization is one of the most important prerequisites for fast convergence of feed-forwar...
This paper presents a non-random weight initialisation scheme for convolutional neural network layer...
A good weight initialization is crucial to accelerate the convergence of the weights in a neural net...
Abstracf- Proper initialization of neural networks is critical for a successful training of its weig...
The learning methods for feedforward neural networks find the network’s optimal parameters through a...
The goal of this work is to improve the robustness and generalization of deep learning models, using...
This study highlights on the subject of weight initialization in multi-layer feed-forward networks....
A repeatable and deterministic non-random weight initialization method in convolutional layers of ne...
This study high lights on the subject of weight initialization in back-propagation feed-forward netw...
During training one of the most important factor is weight initialization that affects the training ...
Neural network is a machine learning algorithm that has been studied since the mid-1900s, Recently, ...
Abstract. A method for training of an ML network for classification has been proposed by us in [3,4]...
In this paper, a novel data-driven method for weight initialization of Multilayer Perceptrons and Co...
A new method of initializing the weights in deep neural networks is proposed. The method follows two...
The importance of weight initialization when building a deep learning model is often underappreciate...
Proper initialization is one of the most important prerequisites for fast convergence of feed-forwar...
This paper presents a non-random weight initialisation scheme for convolutional neural network layer...
A good weight initialization is crucial to accelerate the convergence of the weights in a neural net...
Abstracf- Proper initialization of neural networks is critical for a successful training of its weig...
The learning methods for feedforward neural networks find the network’s optimal parameters through a...
The goal of this work is to improve the robustness and generalization of deep learning models, using...
This study highlights on the subject of weight initialization in multi-layer feed-forward networks....
A repeatable and deterministic non-random weight initialization method in convolutional layers of ne...
This study high lights on the subject of weight initialization in back-propagation feed-forward netw...
During training one of the most important factor is weight initialization that affects the training ...
Neural network is a machine learning algorithm that has been studied since the mid-1900s, Recently, ...
Abstract. A method for training of an ML network for classification has been proposed by us in [3,4]...