Minimal Perceptrons for Memorizing Complex Patterns

12/12/2015
by   Marissa Pastor, et al.
0

Feedforward neural networks have been investigated to understand learning and memory, as well as applied to numerous practical problems in pattern classification. It is a rule of thumb that more complex tasks require larger networks. However, the design of optimal network architectures for specific tasks is still an unsolved fundamental problem. In this study, we consider three-layered neural networks for memorizing binary patterns. We developed a new complexity measure of binary patterns, and estimated the minimal network size for memorizing them as a function of their complexity. We formulated the minimal network size for regular, random, and complex patterns. In particular, the minimal size for complex patterns, which are neither ordered nor disordered, was predicted by measuring their Hamming distances from known ordered patterns. Our predictions agreed with simulations based on the back-propagation algorithm.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/13/2005

Self-Organizing Multilayered Neural Networks of Optimal Complexity

The principles of self-organizing the neural networks of optimal complex...
research
04/29/2009

Adaptive Learning with Binary Neurons

A efficient incremental learning algorithm for classification tasks, cal...
research
12/15/2017

Optimal top dag compression

It is shown that for a given ordered node-labelled tree of size n and wi...
research
02/22/2023

Pattern detection in ordered graphs

A popular way to define or characterize graph classes is via forbidden s...
research
09/23/2010

A Constructive Algorithm for Feedforward Neural Networks for Medical Diagnostic Reasoning

This research is to search for alternatives to the resolution of complex...
research
01/12/2020

Automatic Extraction and Synthesis of Regular Repeatable Patterns

Textures made of regular repeating patterns are ubiquitous in the real w...
research
11/21/2010

Analysis of attractor distances in Random Boolean Networks

We study the properties of the distance between attractors in Random Boo...

Please sign up or login with your details

Forgot password? Click here to reset