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Bidirectional Associative Memories: Unsupervised Hebbian Learning to Bidirectional Backpropagation

Bart Kosko

2021IEEE Transactions on Systems Man and Cybernetics Systems27 citationsDOI

Abstract

Bidirectional associative memories (BAMs) pass neural signals forward and backward through the same web of synapses. Earlier BAMs had no hidden neurons and did not use supervised learning. They tuned their synaptic weights with unsupervised Hebbian or competitive learning. Two-layer feedback BAMs always converge to fixed-point equilibria for threshold or threshold-like neurons. Every rectangular connection matrix is bidirectionally stable. These simpler BAMs extend to arbitrary hidden layers with supervised learning if the resulting bidirectional backpropagation algorithm uses the proper layer likelihood in the forward and backward directions. Bidirectional backpropagation lets users run deep classifiers and regressors in reverse as well as forward. Bidirectional training exploits pattern and synaptic information that forward-only running ignores.

Topics & Concepts

Hebbian theoryBackpropagationComputer scienceLeabraCompetitive learningArtificial neural networkContent-addressable memoryAssociative propertyArtificial intelligenceUnsupervised learningLayer (electronics)Supervised learningPattern recognition (psychology)MathematicsWake-sleep algorithmOrganic chemistryChemistryPure mathematicsGeneralization errorAdvanced Memory and Neural ComputingNeural Networks and ApplicationsNeural dynamics and brain function
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