Unconventional computing paradigms are typically very difficult to program. By implementing efficient parallel control architectures such as artificial neural networks, we show that it is possible to program unconventional paradigms with relative ease. The work presented implements correlation matrix memories (a form of artificial neural network based on associative memory) in reaction–diffusion chemistry, and shows that implementations of such artificial neural networks can be trained and act in a similar way to conventional implementations
Stöckel A. Design space exploration of associative memories using spiking neurons with respect to ne...
OBJECTIVE: In the theoretical framework of predictive coding and active inference, the brain can be ...
In this paper we describe the VLSI design and testing of a high capacity associative memory which w...
Unconventional computing paradigms are typically very difficult to program. By implementing efficien...
The paper describes a highly-scalable associative memory network capable of handling multiple stream...
The Artificial Reaction Network (ARN) is a Cell Signalling Network inspired connectionist representa...
AbstractProtein Processor Associative Memory (PPAM) is a novel architecture for learning association...
This paper briefly introduces a novel symbolic reasoning system based upon distributed associative m...
Recent years witnessed increased utility of biologically inspired computational models. Neural netwo...
The human brain is extremely effective at performing pattern recognition, even in the presence of no...
International audienceAssociative memories are devices capable of retrieving previously stored messa...
Traditional computational methods are highly structured and linear, properties which they derive fro...
Re-awaking in the 1980s from a rather chequered history Artificial Neural Networks (ANNs) have susta...
Currently neural networks are used in many different domains. But are neural networks also suitable ...
The Artificial Reaction Network (ARN) is a bio-inspired connectionist paradigm based on the emerging...
Stöckel A. Design space exploration of associative memories using spiking neurons with respect to ne...
OBJECTIVE: In the theoretical framework of predictive coding and active inference, the brain can be ...
In this paper we describe the VLSI design and testing of a high capacity associative memory which w...
Unconventional computing paradigms are typically very difficult to program. By implementing efficien...
The paper describes a highly-scalable associative memory network capable of handling multiple stream...
The Artificial Reaction Network (ARN) is a Cell Signalling Network inspired connectionist representa...
AbstractProtein Processor Associative Memory (PPAM) is a novel architecture for learning association...
This paper briefly introduces a novel symbolic reasoning system based upon distributed associative m...
Recent years witnessed increased utility of biologically inspired computational models. Neural netwo...
The human brain is extremely effective at performing pattern recognition, even in the presence of no...
International audienceAssociative memories are devices capable of retrieving previously stored messa...
Traditional computational methods are highly structured and linear, properties which they derive fro...
Re-awaking in the 1980s from a rather chequered history Artificial Neural Networks (ANNs) have susta...
Currently neural networks are used in many different domains. But are neural networks also suitable ...
The Artificial Reaction Network (ARN) is a bio-inspired connectionist paradigm based on the emerging...
Stöckel A. Design space exploration of associative memories using spiking neurons with respect to ne...
OBJECTIVE: In the theoretical framework of predictive coding and active inference, the brain can be ...
In this paper we describe the VLSI design and testing of a high capacity associative memory which w...