A role of constraint in self-organization

09/30/1998
by   Carlos Domingo, et al.
0

In this paper we introduce a neural network model of self-organization. This model uses a variation of Hebb rule for updating its synaptic weights, and surely converges to the equilibrium status. The key point of the convergence is the update rule that constrains the total synaptic weight and this seems to make the model stable. We investigate the role of the constraint and show that it is the constraint that makes the model stable. For analyzing this setting, we propose a simple probabilistic game that models the neural network and the self-organization process. Then, we investigate the characteristics of this game, namely, the probability that the game becomes stable and the number of the steps it takes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/23/2018

On the Relation of Impulse Propagation to Synaptic Strength

In neural network, synaptic strength could be seen as probability to tra...
research
10/08/2015

Automata networks for multi-party communication in the Naming Game

The Naming Game has been studied to explore the role of self-organizatio...
research
10/26/2017

On the role of synaptic stochasticity in training low-precision neural networks

Stochasticity and limited precision of synaptic weights in neural networ...
research
04/02/2016

Stability of Analytic Neural Networks with Event-triggered Synaptic Feedbacks

In this paper, we investigate stability of a class of analytic neural ne...
research
02/25/2022

From Biological Synapses to Intelligent Robots

This review explores biologically inspired learning as a model for intel...
research
03/27/2013

A Constraint Propagation Approach to Probabilistic Reasoning

The paper demonstrates that strict adherence to probability theory does ...
research
04/17/2023

Provable local learning rule by expert aggregation for a Hawkes network

We propose a simple network of Hawkes processes as a cognitive model cap...

Please sign up or login with your details

Forgot password? Click here to reset