Associative Memory in a Network of `Biological' Neurons

Abstract

The Hopfield network (Hopfield, 1982,1984) provides a simple model of an associative memory in a neuronal structure. This model, however, is based on highly artificial assumptions, especially the use of formal-two state neu(cid:173) rons (Hopfield, 1982) or graded-response neurons (Hopfield, 1984). \Vhat happens if we replace the formal neurons by 'real' biological neurons? \Ve address this question in two steps. First, we show that a simple model of a neuron can capture all relevant features of neuron spiking, i. e., a wide range of spiking frequencies and a realistic distribution of interspike inter(cid:173) vals. Second, we construct an associative memory by linking these neurons together. The analytical solution for a large and fully connected network shows that the Hopfield solution is valid only for neurons with a short re(cid:173) fractory period. If the refractory period is longer than a crit.ical duration ie, the solutions are qualitatively different. The associative character of the solutions, however, is preserved.

Cite

Text

Gerstner. "Associative Memory in a Network of `Biological' Neurons." Neural Information Processing Systems, 1990.

Markdown

[Gerstner. "Associative Memory in a Network of `Biological' Neurons." Neural Information Processing Systems, 1990.](https://mlanthology.org/neurips/1990/gerstner1990neurips-associative/)

BibTeX

@inproceedings{gerstner1990neurips-associative,
  title     = {{Associative Memory in a Network of `Biological' Neurons}},
  author    = {Gerstner, Wulfram},
  booktitle = {Neural Information Processing Systems},
  year      = {1990},
  pages     = {84-90},
  url       = {https://mlanthology.org/neurips/1990/gerstner1990neurips-associative/}
}