This paper presents an investigation into three algorithms that have pattern matching and learning capabilities. There are many neural network models in use today that are computationally viable for numerous tasks. These models tend to be inspired from neuroscience; this is evident from some of the terminology used such as threshold levels. However, many of these models incorporate complex algorithms for which there is no biological basis; in addition, these models tend to be multi-pass systems and are too slow for biological implementation. Backpropagation is one such example. The algorithms discussed in this paper share the common property of being good candidates for neural implementation; they are one-pass systems incorporating variatio...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This paper deals with the computational aspects of neural networks. Specifically, it is suggested th...
The concept of Hebbian learning refers to a family of learning rules, inspired by biology, according...
In the past few years, Deep Neural Network (DNN) architectures have achieved outstanding results in ...
Artificial neural networks in their various different forms convincingly dominate machine learning o...
The state-of-the art machine learning approach to training deep neural networks, backpropagation, is...
Introduction Backpropagation and contrastive Hebbian learning (CHL) are two supervised learning alg...
Abstract — We have recently proposed a novel neural network structure called an “Affordable Neural N...
A learning rule for stochastic neural networks is described, which corresponds to biological neural ...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
It is widely believed that end-to-end training with the backpropagation algorithm is essential for l...
this paper. After evaluating some of these limits, as well as some of the advantages, we present a n...
A system with some degree of biological plausibility is developed to categorise items from a widely ...
Artificial neural networks have, in recent years, been very successfully applied in a wide range of ...
The Problem: How can a distributed system of independent processors, armed with local communication ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This paper deals with the computational aspects of neural networks. Specifically, it is suggested th...
The concept of Hebbian learning refers to a family of learning rules, inspired by biology, according...
In the past few years, Deep Neural Network (DNN) architectures have achieved outstanding results in ...
Artificial neural networks in their various different forms convincingly dominate machine learning o...
The state-of-the art machine learning approach to training deep neural networks, backpropagation, is...
Introduction Backpropagation and contrastive Hebbian learning (CHL) are two supervised learning alg...
Abstract — We have recently proposed a novel neural network structure called an “Affordable Neural N...
A learning rule for stochastic neural networks is described, which corresponds to biological neural ...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
It is widely believed that end-to-end training with the backpropagation algorithm is essential for l...
this paper. After evaluating some of these limits, as well as some of the advantages, we present a n...
A system with some degree of biological plausibility is developed to categorise items from a widely ...
Artificial neural networks have, in recent years, been very successfully applied in a wide range of ...
The Problem: How can a distributed system of independent processors, armed with local communication ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This paper deals with the computational aspects of neural networks. Specifically, it is suggested th...
The concept of Hebbian learning refers to a family of learning rules, inspired by biology, according...