Proper initialization is one of the most important prerequisites for fast convergence of feed-forward neural networks like high order and multilayer perceptrons. This publication aims at determining the optimal value of the initial weight variance (or range), which is the principal parameter of random weight initialization methods for both types of neural networks. An overview of random weight initialization methods for multilayer perceptrons is presented. These methods are extensively tested using eight real-world benchmark data sets and a broad range of initial weight variances by means of more than 30; 000 simulations, in the aim to find the best weight initialization method for multilayer perceptrons. For high order networks, a large nu...
Artificial neural networks (ANN), esp. multilayer perceptrons (MLP) have been widely used in pattern...
Artificial neural networks (ANN), especially, multilayer perceptrons (MLP) have been widely used in ...
YesWeight initialization of neural networks has an important influence on the learning process, and ...
Abstracf- Proper initialization of neural networks is critical for a successful training of its weig...
In this paper, a novel data-driven method for weight initialization of Multilayer Perceptrons and Co...
The paper is devoted to the comparison of different approaches to initialization of neural network w...
A new method of initializing the weights in deep neural networks is proposed. The method follows two...
The learning methods for feedforward neural networks find the network’s optimal parameters through a...
Neural network is a machine learning algorithm that has been studied since the mid-1900s, Recently, ...
Neural networks are widely applied in research and industry. However, their broader application is h...
Neural networks are widely applied in research and industry. However, their broader application is h...
A good weight initialization is crucial to accelerate the convergence of the weights in a neural net...
The importance of weight initialization when building a deep learning model is often underappreciate...
During training one of the most important factor is weight initialization that affects the training ...
This paper presents a non-random weight initialisation scheme for convolutional neural network layer...
Artificial neural networks (ANN), esp. multilayer perceptrons (MLP) have been widely used in pattern...
Artificial neural networks (ANN), especially, multilayer perceptrons (MLP) have been widely used in ...
YesWeight initialization of neural networks has an important influence on the learning process, and ...
Abstracf- Proper initialization of neural networks is critical for a successful training of its weig...
In this paper, a novel data-driven method for weight initialization of Multilayer Perceptrons and Co...
The paper is devoted to the comparison of different approaches to initialization of neural network w...
A new method of initializing the weights in deep neural networks is proposed. The method follows two...
The learning methods for feedforward neural networks find the network’s optimal parameters through a...
Neural network is a machine learning algorithm that has been studied since the mid-1900s, Recently, ...
Neural networks are widely applied in research and industry. However, their broader application is h...
Neural networks are widely applied in research and industry. However, their broader application is h...
A good weight initialization is crucial to accelerate the convergence of the weights in a neural net...
The importance of weight initialization when building a deep learning model is often underappreciate...
During training one of the most important factor is weight initialization that affects the training ...
This paper presents a non-random weight initialisation scheme for convolutional neural network layer...
Artificial neural networks (ANN), esp. multilayer perceptrons (MLP) have been widely used in pattern...
Artificial neural networks (ANN), especially, multilayer perceptrons (MLP) have been widely used in ...
YesWeight initialization of neural networks has an important influence on the learning process, and ...