The Echo Index and multistability in input-driven recurrent neural networks
Abstract
A recurrent neural network (RNN) possesses the echo state property (ESP) if, for a given input sequence, it ``forgets'' any internal states of the driven (nonautonomous) system and asymptotically follows a unique, possibly complex trajectory. The lack of ESP is conventionally understood as a lack of reliable behaviour in RNNs. Here, we show that RNNs can reliably perform computations under a more general principle that accounts only for their local behaviour in phase space. To this end, we formulate a generalisation of the ESP and introduce an echo index to characterise the number of simultaneously stable responses of a driven RNN. We show that it is possible for the echo index to change with inputs, highlighting a potential source of computational errors in RNNs due to characteristics of the inputs driving the dynamics.
Keywords
Cite
@article{arxiv.2001.07694,
title = {The Echo Index and multistability in input-driven recurrent neural networks},
author = {Andrea Ceni and Peter Ashwin and Lorenzo Livi and Claire Postlethwaite},
journal= {arXiv preprint arXiv:2001.07694},
year = {2020}
}
Comments
Revised version, 43 pages, 6 figures