Protein Processor Associative Memory (PPAM) is a novel architecture for learning associations incrementally and online and performing fast, reliable, scalable hetero-associative recall. This paper presents a comparison of the PPAM with the Bidirectional Associative Memory (BAM), both with Kosko's original training algorithm and also with the more popular Pseudo-Relaxation Learning Algorithm for BAM (PRLAB). It also compares the PPAM with a more recent associative memory architecture called SOIAM. Results of training for object-avoidance are presented from simulations using player/stage and are verified by actual implementations on the E-Puck mobile robot. Finally, we show how the PPAM is capable of achieving an increase in performance witho...
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
We propose a new associative memory to improve its noise tolerance and storage capacity. Our underly...
The evolution of Artificial Intelligence has passed through many phases over the years, going from r...
AbstractProtein Processor Associative Memory (PPAM) is a novel architecture for learning association...
The PPAM is a hardware architecture for a robust, bidirectional and scalable hetero-associative memo...
The Protein Processor Associative Memory (PPAM) is a novel hardware architecture for a distributed, ...
This paper details an extension to an architecture for robust bidirectional hetero-associative recal...
The Protein Processor Associative Memory (PPAM) is a novel hardware architecture for a distributed, ...
Associative memory is a data collectively stored in the form of a memory or weight matrix, which is ...
Learning in bidirectional associative memory (BAM) is typically Hebbian-based. Since Kosko's 1988 ['...
Abstract—Typical bidirectional associative memories (BAM) use an offline, one-shot learning rule, ha...
The classical Bidirectional Associative Memory (BAM) allows for the storage of pairs of vectors, suc...
Brain-inspired, artificial neural network approach offers the ability to develop attractors for each...
Learning in Bidirectional Associative Memory (BAM) is typically based on Hebbian-type learning. Sinc...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
We propose a new associative memory to improve its noise tolerance and storage capacity. Our underly...
The evolution of Artificial Intelligence has passed through many phases over the years, going from r...
AbstractProtein Processor Associative Memory (PPAM) is a novel architecture for learning association...
The PPAM is a hardware architecture for a robust, bidirectional and scalable hetero-associative memo...
The Protein Processor Associative Memory (PPAM) is a novel hardware architecture for a distributed, ...
This paper details an extension to an architecture for robust bidirectional hetero-associative recal...
The Protein Processor Associative Memory (PPAM) is a novel hardware architecture for a distributed, ...
Associative memory is a data collectively stored in the form of a memory or weight matrix, which is ...
Learning in bidirectional associative memory (BAM) is typically Hebbian-based. Since Kosko's 1988 ['...
Abstract—Typical bidirectional associative memories (BAM) use an offline, one-shot learning rule, ha...
The classical Bidirectional Associative Memory (BAM) allows for the storage of pairs of vectors, suc...
Brain-inspired, artificial neural network approach offers the ability to develop attractors for each...
Learning in Bidirectional Associative Memory (BAM) is typically based on Hebbian-type learning. Sinc...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
We propose a new associative memory to improve its noise tolerance and storage capacity. Our underly...
The evolution of Artificial Intelligence has passed through many phases over the years, going from r...