Input-to-State Representation in Linear Reservoirs Dynamics.

Journal: IEEE transactions on neural networks and learning systems
Published Date:

Abstract

Reservoir computing is a popular approach to design recurrent neural networks, due to its training simplicity and approximation performance. The recurrent part of these networks is not trained (e.g., via gradient descent), making them appealing for analytical studies by a large community of researchers with backgrounds spanning from dynamical systems to neuroscience. However, even in the simple linear case, the working principle of these networks is not fully understood and their design is usually driven by heuristics. A novel analysis of the dynamics of such networks is proposed, which allows the investigator to express the state evolution using the controllability matrix. Such a matrix encodes salient characteristics of the network dynamics; in particular, its rank represents an input-independent measure of the memory capacity of the network. Using the proposed approach, it is possible to compare different reservoir architectures and explain why a cyclic topology achieves favorable results as verified by practitioners.

Authors

  • Pietro Verzelli
    Faculty of Informatics, Università della Svizzera Italiana, Lugano 69000, Switzerland.
  • Cesare Alippi
    Department of Electronics, Information, and Bioengineering, Politecnico di Milano, 20133 Milan, Italy.
  • Lorenzo Livi
    Department of Computer Science, College of Engineering, Mathematics and Physical Sciences, University of Exeter, Exeter EX4 4QF, United Kingdom.
  • Peter Tiňo
    School of Computer Science, The University of Birmingham, Edgbaston, Birmingham B15 2TT, UK. Electronic address: P.Tino@cs.bham.ac.uk.