English

Using Connectome Features to Constrain Echo State Networks

Machine Learning 2023-02-13 v2 Neural and Evolutionary Computing

Abstract

We report an improvement to the conventional Echo State Network (ESN) across three benchmark chaotic time-series prediction tasks using fruit fly connectome data alone. We also investigate the impact of key connectome-derived structural features on prediction performance -- uniquely bridging neurobiological structure and machine learning function; and find that both increasing the global average clustering coefficient and modifying the position of weights -- by permuting their synapse-synapse partners -- can lead to increased model variance and (in some cases) degraded performance. In all we consider four topological point modifications to a connectome-derived ESN reservoir (null model): namely, we alter the network sparsity, re-draw nonzero weights from a uniform distribution, permute nonzero weight positions, and increase the network global average clustering coefficient. We compare the four resulting ESN model classes -- and the null model -- with a conventional ESN by conducting time-series prediction experiments on size-variants of the Mackey-Glass 17 (MG-17), Lorenz, and Rossler chaotic time series; denoting each model's performance and variance across train-validate trials.

Keywords

Cite

@article{arxiv.2206.02094,
  title  = {Using Connectome Features to Constrain Echo State Networks},
  author = {Jacob Morra and Mark Daley},
  journal= {arXiv preprint arXiv:2206.02094},
  year   = {2023}
}

Comments

8 pages, 5 figures

R2 v1 2026-06-24T11:39:29.980Z