Multi/infinite dimensional neural networks, multi/infinite dimensional logic theory.

Garimella Rama Murthy
Author Information
  1. Garimella Rama Murthy: International Institute of Information Technology (IIIT), Gachibowli, Hyderabad-500019, AP, India. rammurthy@iiit.net

Abstract

A mathematical model of an arbitrary multi-dimensional neural network is developed and a convergence theorem for an arbitrary multi-dimensional neural network represented by a fully symmetric tensor is stated and proved. The input and output signal states of a multi-dimensional neural network/logic gate are related through an energy function, defined over the fully symmetric tensor (representing the connection structure of a multi-dimensional neural network). The inputs and outputs are related such that the minimum/maximum energy states correspond to the output states of the logic gate/neural network realizing a logic function. Similarly, a logic circuit consisting of the interconnection of logic gates, represented by a block symmetric tensor, is associated with a quadratic/higher degree energy function. Infinite dimensional logic theory is discussed through the utilization of infinite dimension/order tensors.

MeSH Term

Algorithms
Animals
Association Learning
Humans
Information Theory
Logic
Memory
Models, Statistical
Nerve Net
Neural Networks, Computer

Word Cloud

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