English

Delay Learning Architectures for Memory and Classification

Neural and Evolutionary Computing 2014-02-28 v2 Neurons and Cognition

Abstract

We present a neuromorphic spiking neural network, the DELTRON, that can remember and store patterns by changing the delays of every connection as opposed to modifying the weights. The advantage of this architecture over traditional weight based ones is simpler hardware implementation without multipliers or digital-analog converters (DACs) as well as being suited to time-based computing. The name is derived due to similarity in the learning rule with an earlier architecture called Tempotron. The DELTRON can remember more patterns than other delay-based networks by modifying a few delays to remember the most 'salient' or synchronous part of every spike pattern. We present simulations of memory capacity and classification ability of the DELTRON for different random spatio-temporal spike patterns. The memory capacity for noisy spike patterns and missing spikes are also shown. Finally, we present SPICE simulation results of the core circuits involved in a reconfigurable mixed signal implementation of this architecture.

Keywords

Cite

@article{arxiv.1311.1294,
  title  = {Delay Learning Architectures for Memory and Classification},
  author = {Shaista Hussain and Arindam Basu and R. Wang and Tara Julia Hamilton},
  journal= {arXiv preprint arXiv:1311.1294},
  year   = {2014}
}

Comments

27 pages, 20 figures

R2 v1 2026-06-22T02:02:01.894Z