Is it possible to generally construct a dynamical system to simulate a black system without recovering the equations of motion of the latter? Here we show that this goal can be approached by a learning machine. Trained by a set of input-output responses or a segment of time series of a black system, a learning machine can be served as a copy system to mimic the dynamics of various black systems. It can not only behave as the black system at the parameter set that the training data are made, but also recur the evolution history of the black system. As a result, the learning machine provides an effective way for prediction, and enables one to probe the global dynamics of a black system. These findings have significance for practical systems w...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Abstract In a recent work, it has been shown that Boolean networks (BN), a well-known genetic regula...
This dissertation addresses a fundamental problem in computational AI--developing a class of massive...
The goal of this paper is to determine the laws of observed trajectories assuming that there is a me...
A physical self-learning machine can be defined as a nonlinear dynamical system that can be trained ...
In this work, we present a modern neural network construction method able to build approximations to...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
The problem of determining the underlying dynamics of a system when only given data of its state ove...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
A neural-network mathematical model that, relative to prior such models, places greater emphasis on ...
AbstractThis paper reasons about the need to seek for particular kinds of models of computation that...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
We present in this paper a biologically inspired model of the Basal Ganglia which deals with Block C...
We propose that the behavior of nonlinear media can be controlled automatically through evolutionary...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Abstract In a recent work, it has been shown that Boolean networks (BN), a well-known genetic regula...
This dissertation addresses a fundamental problem in computational AI--developing a class of massive...
The goal of this paper is to determine the laws of observed trajectories assuming that there is a me...
A physical self-learning machine can be defined as a nonlinear dynamical system that can be trained ...
In this work, we present a modern neural network construction method able to build approximations to...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
The problem of determining the underlying dynamics of a system when only given data of its state ove...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
A neural-network mathematical model that, relative to prior such models, places greater emphasis on ...
AbstractThis paper reasons about the need to seek for particular kinds of models of computation that...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
We present in this paper a biologically inspired model of the Basal Ganglia which deals with Block C...
We propose that the behavior of nonlinear media can be controlled automatically through evolutionary...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Abstract In a recent work, it has been shown that Boolean networks (BN), a well-known genetic regula...
This dissertation addresses a fundamental problem in computational AI--developing a class of massive...