Dimension of reservoir computers
Thomas L. Carroll
Abstract
A reservoir computer is a complex dynamical system, often created by coupling nonlinear nodes in a network. The nodes are all driven by a common driving signal. In this work, three dimension estimation methods, false nearest neighbor, covariance dimension, and Kaplan-Yorke dimension, are used to estimate the dimension of the reservoir dynamical system. It is shown that the signals in the reservoir system exist on a relatively low dimensional surface. Changing the spectral radius of the reservoir network can increase the fractal dimension of the reservoir signals, leading to an increase in a testing error.
Topics & Concepts
Dimension (graph theory)Reservoir computingCovarianceFractal dimensionNonlinear systemRADIUSCoupling (piping)Box countingDynamical systems theorySIGNAL (programming language)Intrinsic dimensionComputer scienceFractalMathematicsStatistical physicsFractal analysisStatisticsMathematical analysisArtificial intelligenceEngineeringPhysicsArtificial neural networkPure mathematicsCurse of dimensionalityComputer securityRecurrent neural networkQuantum mechanicsProgramming languageMechanical engineeringNeural Networks and Reservoir ComputingNeural Networks and ApplicationsAdvanced Memory and Neural Computing