Training a Limited-Interconnect, Synthetic Neural IC
Abstract
Hardware implementation of neuromorphic algorithms is hampered by high degrees of connectivity. Functionally equivalent feedforward networks may be formed by using limited fan-in nodes and additional layers. but this complicates procedures for determining weight magnitudes. No direct mapping of weights exists between fully and limited-interconnect nets. Low-level nonlinearities prevent the formation of internal representations of widely separated spatial features and the use of gradient descent methods to minimize output error is hampered by error magnitude dissipation. The judicious use of linear summations or collection units is proposed as a solution.
Cite
Text
Walker et al. "Training a Limited-Interconnect, Synthetic Neural IC." Neural Information Processing Systems, 1988.Markdown
[Walker et al. "Training a Limited-Interconnect, Synthetic Neural IC." Neural Information Processing Systems, 1988.](https://mlanthology.org/neurips/1988/walker1988neurips-training/)BibTeX
@inproceedings{walker1988neurips-training,
title = {{Training a Limited-Interconnect, Synthetic Neural IC}},
author = {Walker, M. R. and Haghighi, S. and Afghan, A. and Akers, Larry A.},
booktitle = {Neural Information Processing Systems},
year = {1988},
pages = {777-784},
url = {https://mlanthology.org/neurips/1988/walker1988neurips-training/}
}