< Back to previous page

Publication

The spectral radius remains a valid indicator of the echo state property for large reservoirs

Book Contribution - Book Chapter Conference Contribution

In the field of Reservoir Computing, scaling the spectral radius of the weight matrix of a random recurrent neural network to below unity is a commonly used method to ensure the Echo State Property. Recently it has been shown that this condition is too weak. To overcome this problem, other more involved - sufficient conditions for the Echo State Property have been proposed. In this paper we provide a large-scale experimental verification of the Echo State Property for large recurrent neural networks with zero input and zero bias. Our main conclusion is that the spectral radius method remains a valid indicator of the Echo State Property; the probability that the Echo State Property does not hold, drops for larger networks with spectral radius below unity, which are the ones of practical interest.
Book: IEEE International Joint Conference on Neural Networks (IJCNN)
Number of pages: 1
ISBN:9781467361293
Publication year:2013
BOF-keylabel:yes
IOF-keylabel:yes
Accessibility:Open