Neural Networks trained with the Belief Propagation Inspired (BPI) algorithm are able to learn a number of associations close to the theoretical limit in time that is sublinear in the number of input. Using binary synapses, implemented by a memristor, a single layer perceptron with BPI has been proposed. It well know that perceptrons with step function type nonlinearity can be implemented by a suitable class of Cellular Neural/Nonlinear Networks. This paper aims to present a statistical analysis on the learning efficiency of Memristor-based Cellular Nonlinear Networks (M-CNNs) with Belief Propagation Inspired (BPI) algorithm. Monte Carlo simulations permit to assess that the learning efficiency of M-CNNs with BPI is not regardless of the input signals given to train the perceptron.

Memristor-based cellular nonlinear networks with belief propagation inspired algorithm / Secco, J.; Corinto, F.. - (2015), pp. 1522-1525. (Intervento presentato al convegno IEEE International Symposium on Circuits and Systems, ISCAS 2015 tenutosi a Lisbon (Port) nel 24-27 May 2015) [10.1109/ISCAS.2015.7168935].

Memristor-based cellular nonlinear networks with belief propagation inspired algorithm

Secco, J.;Corinto, F.
2015

Abstract

Neural Networks trained with the Belief Propagation Inspired (BPI) algorithm are able to learn a number of associations close to the theoretical limit in time that is sublinear in the number of input. Using binary synapses, implemented by a memristor, a single layer perceptron with BPI has been proposed. It well know that perceptrons with step function type nonlinearity can be implemented by a suitable class of Cellular Neural/Nonlinear Networks. This paper aims to present a statistical analysis on the learning efficiency of Memristor-based Cellular Nonlinear Networks (M-CNNs) with Belief Propagation Inspired (BPI) algorithm. Monte Carlo simulations permit to assess that the learning efficiency of M-CNNs with BPI is not regardless of the input signals given to train the perceptron.
2015
9781479983919
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/3004332