Binding threshold units with artificial oscillatory neurons
Vladimir Fanaskov, Ivan Oseledets

TL;DR
This paper introduces a theoretical framework linking oscillatory Kuramoto neurons with threshold units, enabling coupled models that enhance neural coding and associative memory, with practical implications for machine learning.
Contribution
It establishes a formal coupling mechanism between oscillatory and threshold neurons, distinguishing their roles and enabling hybrid neural models with Lyapunov functions.
Findings
Coupled Hopfield-Kuramoto models admit Lyapunov functions.
Oscillatory neurons can implement low-rank weight corrections.
Practical toy experiments demonstrate the coupling mechanism.
Abstract
Artificial Kuramoto oscillatory neurons were recently introduced as an alternative to threshold units. Empirical evidence suggests that oscillatory units outperform threshold units in several tasks including unsupervised object discovery and certain reasoning problems. The proposed coupling mechanism for these oscillatory neurons is heterogeneous, combining a generalized Kuramoto equation with standard coupling methods used for threshold units. In this research note, we present a theoretical framework that clearly distinguishes oscillatory neurons from threshold units and establishes a coupling mechanism between them. We argue that, from a biological standpoint, oscillatory and threshold units realise distinct aspects of neural coding: roughly, threshold units model intensity of neuron firing, while oscillatory units facilitate information exchange by frequency modulation. To derive…
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Taxonomy
TopicsNeural Networks and Applications · Neural Networks and Reservoir Computing · Photonic and Optical Devices
