A number of types of neural network have been shown to be useful for a wide range of tasks, and can be “trained” in a large number of ways. This paper considers how it might be possible to train and run neural networks to respond in different ways under different prevailing circumstances, achieving smooth transitions between multiple learned behaviours in a single network. This type of behaviour has been shown to be useful in a range of applications, such as maintenance of homeostasis. We introduce a novel technique for training multilayer perceptrons which improves on the transitional behaviour of many existing methods, and permits explicit training of multiple behaviours in a single network using gradient descent
Abstract. The paper proposes a general framework which encompasses the training of neural networks a...
Standard feedforward neural networks benefit from the nice theoretical properties of mixtures of sig...
: Traditional connectionist networks have homogeneous nodes wherein each node executes the same func...
A number of types of neural network have been shown to be useful for a wide range of tasks, and can ...
This paper demonstrates how a multi-layer feed-forward network may be trained, using the method of g...
The training of multilayer perceptron is generally a difficult task. Excessive training times and la...
[[abstract]]In this paper, we applied the concepts of minimizing weight sensitivity cost and trainin...
A new methodology for neural learning is presented, whereby only a single iteration is required to t...
In this thesis I demonstrated how a singular neural network can potentially represent the set of mor...
Neural networks as a general mechanism for learning and adaptation became increasingly popular in re...
Abstract. A feedforward neural network based on multi-valued neurons is considered in the paper. It ...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
We study a feed-forward neural network for two independent function approximation tasks. Upon traini...
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
EÆcient training of multilayer networks with discrete activation functions is a subject of considera...
Abstract. The paper proposes a general framework which encompasses the training of neural networks a...
Standard feedforward neural networks benefit from the nice theoretical properties of mixtures of sig...
: Traditional connectionist networks have homogeneous nodes wherein each node executes the same func...
A number of types of neural network have been shown to be useful for a wide range of tasks, and can ...
This paper demonstrates how a multi-layer feed-forward network may be trained, using the method of g...
The training of multilayer perceptron is generally a difficult task. Excessive training times and la...
[[abstract]]In this paper, we applied the concepts of minimizing weight sensitivity cost and trainin...
A new methodology for neural learning is presented, whereby only a single iteration is required to t...
In this thesis I demonstrated how a singular neural network can potentially represent the set of mor...
Neural networks as a general mechanism for learning and adaptation became increasingly popular in re...
Abstract. A feedforward neural network based on multi-valued neurons is considered in the paper. It ...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
We study a feed-forward neural network for two independent function approximation tasks. Upon traini...
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
EÆcient training of multilayer networks with discrete activation functions is a subject of considera...
Abstract. The paper proposes a general framework which encompasses the training of neural networks a...
Standard feedforward neural networks benefit from the nice theoretical properties of mixtures of sig...
: Traditional connectionist networks have homogeneous nodes wherein each node executes the same func...