Litcius/Paper detail

Oscillatory neural network learning for pattern recognition: an on-chip learning perspective and implementation

Madeleine Abernot, Nadine Azémard, Aida Todri‐Sanial

2023Frontiers in Neuroscience11 citationsDOIOpen Access PDF

Abstract

In the human brain, learning is continuous, while currently in AI, learning algorithms are pre-trained, making the model non-evolutive and predetermined. However, even in AI models, environment and input data change over time. Thus, there is a need to study continual learning algorithms. In particular, there is a need to investigate how to implement such continual learning algorithms on-chip. In this work, we focus on Oscillatory Neural Networks (ONNs), a neuromorphic computing paradigm performing auto-associative memory tasks, like Hopfield Neural Networks (HNNs). We study the adaptability of the HNN unsupervised learning rules to on-chip learning with ONN. In addition, we propose a first solution to implement unsupervised on-chip learning using a digital ONN design. We show that the architecture enables efficient ONN on-chip learning with Hebbian and Storkey learning rules in hundreds of microseconds for networks with up to 35 fully-connected digital oscillators.

Topics & Concepts

Neuromorphic engineeringComputer scienceUnsupervised learningArtificial intelligenceArtificial neural networkLeabraHebbian theoryCompetitive learningMachine learningDeep learningContent-addressable memorySpiking neural networkAdaptabilityWake-sleep algorithmBiologyGeneralization errorEcologyAdvanced Memory and Neural ComputingNeural Networks and Reservoir ComputingFerroelectric and Negative Capacitance Devices