abstract: Humans have an excellent ability to analyze and process information from multiple domains. They also possess the ability to apply the same decision-making process when the situation is familiar with their previous experience. Inspired by human's ability to remember past experiences and apply the same when a similar situation occurs, the research community has attempted to augment memory with Neural Network to store the previously learned information. Together with this, the community has also developed mechanisms to perform domain-specific weight switching to handle multiple domains using a single model. Notably, the two research fields work independently, and the goal of this dissertation is to combine their capabilities. This...
We propose a novel neural network for incremental learning tasks where networks are required to lear...
Abstract: Usually, generalization is considered as a function of learning from a set of examples. In...
International audienceAbstraet-A neural network model for fast learning and storage of temporal sequ...
The type of neural networks widely used in artificial intelligence applications mixes its computatio...
This work explores the capabilities of the current Reinforcement Learning algorithms and the Memory ...
We extend the capabilities of neural networks by coupling them to external memory re-sources, which ...
Neural networks (NN) have achieved great successes in pattern recognition and machine learning. Howe...
This thesis presents a biologically inspired multi-memory system for modeling the structures and con...
First, a brief overview of neural networks and their applications are described, including the BAM (...
While memory is fundamental in enabling intelligence, the development of neural memory architectures...
In this paper, we present a neural network system related to about memory and recall that consists o...
Research efforts in the improvement of artificial neural networks have provided significant enhancem...
Weight modifications in traditional neural nets are computed by hard-wired algorithms. Without excep...
Transfer of learning (TL) has been an important research area for scholars, educators, and cognitive...
Traditional artificial neural networks cannot reflect about their own weight modification algorithm....
We propose a novel neural network for incremental learning tasks where networks are required to lear...
Abstract: Usually, generalization is considered as a function of learning from a set of examples. In...
International audienceAbstraet-A neural network model for fast learning and storage of temporal sequ...
The type of neural networks widely used in artificial intelligence applications mixes its computatio...
This work explores the capabilities of the current Reinforcement Learning algorithms and the Memory ...
We extend the capabilities of neural networks by coupling them to external memory re-sources, which ...
Neural networks (NN) have achieved great successes in pattern recognition and machine learning. Howe...
This thesis presents a biologically inspired multi-memory system for modeling the structures and con...
First, a brief overview of neural networks and their applications are described, including the BAM (...
While memory is fundamental in enabling intelligence, the development of neural memory architectures...
In this paper, we present a neural network system related to about memory and recall that consists o...
Research efforts in the improvement of artificial neural networks have provided significant enhancem...
Weight modifications in traditional neural nets are computed by hard-wired algorithms. Without excep...
Transfer of learning (TL) has been an important research area for scholars, educators, and cognitive...
Traditional artificial neural networks cannot reflect about their own weight modification algorithm....
We propose a novel neural network for incremental learning tasks where networks are required to lear...
Abstract: Usually, generalization is considered as a function of learning from a set of examples. In...
International audienceAbstraet-A neural network model for fast learning and storage of temporal sequ...