Energy Decay Network (EDeN)
Abstract
This paper and accompanying Python and C++ Framework is the product of the authors perceived problems with narrow (Discrimination based) AI. (Artificial Intelligence) The Framework attempts to develop a genetic transfer of experience through potential structural expressions using a common regulation/exchange value (energy) to create a model whereby neural architecture and all unit processes are co-dependently developed by genetic and real time signal processing influences; successful routes are defined by stability of the spike distribution per epoch which is influenced by genetically encoded morphological development biases.These principles are aimed towards creating a diverse and robust network that is capable of adapting to general tasks by training within a simulation designed for transfer learning to other mediums at scale.
Cite
@article{arxiv.2103.15552,
title = {Energy Decay Network (EDeN)},
author = {Jamie Nicholas Shelley and Optishell Consultancy},
journal= {arXiv preprint arXiv:2103.15552},
year = {2026}
}
Comments
Added section on temporal eligility + added edits to cem processing (removed sigmod pass)