Affiliation:
1. Center for Artificial Intelligence and Natural Sciences, Korea Institute for Advanced Study 1 , Seoul 02455, South Korea
2. Department of Mathematical Sciences, Ulsan National Institute of Science and Technology 2 , Ulsan 44919, South Korea
Abstract
Reservoir computing, one of the state-of-the-art machine learning architectures, processes time-series data generated by dynamical systems. Nevertheless, we have realized that reservoir computing with the conventional single-reservoir structure suffers from capacity saturation. This leads to performance stagnation in practice. Therefore, we propose an extended reservoir computing architecture called reservoir concatenation to further delay such stagnation. Not only do we provide training error analysis and test error comparison of reservoir concatenation, but we also propose a crucial measure, which is the trace associated with a reservoir state matrix, that explains the level of responsiveness to reservoir concatenation. Two reservoir dynamics are compared in detail, one by using the echo state network and the other by using a synchronization model called an explosive Kuramoto model. The distinct eigenvalue distributions of the reservoir state matrices from the two models are well reflected in the trace values that are shown to account for the different reservoir capacity behaviors, determining the different levels of responsiveness.
Funder
National Research Foundation of Korea
Korea Institute for Advanced Study
Subject
General Physics and Astronomy