Maxwell-Boltzmann Distribution: Problem Solving
Rotation of Asymmetric Top
Asymmetric Lipid Bilayer
Parallel Resonance
Parallel Processing
Machines
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Constructing and Visualizing Models using Mime-based Machine-learning Framework
Published on: July 22, 2025
Bruno Apolloni1, Diego de Falco2
1Dipartimento di Scienze dell' Informazione, Università di Milano, I-20133 Milano, Italy.
Researchers adapted an entropic learning rule for parallel asymmetric Boltzmann machines. This novel Hebbian learning rule uses network history to update synaptic weights, offering an alternative to error backpropagation for feedforward networks.
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