This paper gives a general insight into how the neuron structure in a multilayer perceptron (MLP) can affect the ability of neurons to deal with classification. Most of the common neuron structures are based on monotonic activation functions and linear input mappings. In comparison, the proposed neuron structure utilizes a nonmonotonic activation function and/or a nonlinear input mapping to increase the power of a neuron. An MLP of these high power neurons usually requires a less number of hidden nodes than conventional MLP for solving classification problems. The fewer number of neurons is equivalent to the smaller number of network weights that must be optimally determined by a learning algorithm. The performance of learning algorithm is ...
An analogy between a genetic algorithm based pattern classification scheme (where hyperplanes are us...
An analogy between a genetic algorithm based pattern classification scheme (where hyperplanes are us...
Sensitivity analysis on a neural network is mainly investigated after the network has been designed ...
This paper introduces a change in the structure of an artificial neuron (McCulloch and Pitts), to im...
The traditional multilayer perceptron (MLP) using a McCulloch-Pitts neuron model is inherently limit...
Machine learning is a field that is inspired by how humans and, by extension, the brain learns.The b...
Machine learning is a field that is inspired by how humans and, by extension, the brain learns.The b...
Abstract:- The most common (or even only) choice of activation functions for multi–layer perceptrons...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
Abstract—A glia is nervous cell which is existing in a brain. This cell changes a Ca2+ concentration...
This thesis concerns the Multi-layer Perceptron (MLP) model, one of a variety of neural network mode...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many neural network models as spe...
Most application work within neural computing continues to employ multi-layer perceptrons (MLP). Tho...
A multilayer perceptron is a feed forward artificial neural network model that maps sets of input da...
An analogy between a genetic algorithm based pattern classification scheme (where hyperplanes are us...
An analogy between a genetic algorithm based pattern classification scheme (where hyperplanes are us...
Sensitivity analysis on a neural network is mainly investigated after the network has been designed ...
This paper introduces a change in the structure of an artificial neuron (McCulloch and Pitts), to im...
The traditional multilayer perceptron (MLP) using a McCulloch-Pitts neuron model is inherently limit...
Machine learning is a field that is inspired by how humans and, by extension, the brain learns.The b...
Machine learning is a field that is inspired by how humans and, by extension, the brain learns.The b...
Abstract:- The most common (or even only) choice of activation functions for multi–layer perceptrons...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
Abstract—A glia is nervous cell which is existing in a brain. This cell changes a Ca2+ concentration...
This thesis concerns the Multi-layer Perceptron (MLP) model, one of a variety of neural network mode...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many neural network models as spe...
Most application work within neural computing continues to employ multi-layer perceptrons (MLP). Tho...
A multilayer perceptron is a feed forward artificial neural network model that maps sets of input da...
An analogy between a genetic algorithm based pattern classification scheme (where hyperplanes are us...
An analogy between a genetic algorithm based pattern classification scheme (where hyperplanes are us...
Sensitivity analysis on a neural network is mainly investigated after the network has been designed ...