This article proposes an efficient numerical method for solving nonlinear partial differential equations (PDEs) based on sparse Gaussian processes (SGPs). Gaussian processes (GPs) have been extensively studied for solving PDEs by formulating the problem of finding a reproducing kernel Hilbert space (RKHS) to approximate a PDE solution. The approximated solution lies in the span of base functions generated by evaluating derivatives of different orders of kernels at sample points. However, the RKHS specified by GPs can result in an expensive computational burden due to the cubic computation order of the matrix inverse. Therefore, we conjecture that a solution exists on a ``condensed" subspace that can achieve similar approximation performance...
We propose a new data-driven approach for learning the fundamental solutions (Green's functions) of ...
In this thesis, we present four algorithms for solving sparse nonlinear systems of equations: the pa...
Making predictions and quantifying their uncertainty when the input data is sequential is a fundamen...
We introduce a simple, rigorous, and unified framework for solving nonlinear partial differential eq...
This work studies sparse reconstruction techniques for approximating solutions of high-dimensional p...
A global regularized Gauss-Newton (GN) method is proposed to obtain a zero residual for square nonli...
Abstract. To solve a partial differential equation (PDE) numerically, we formulate it as a polynomia...
Abstract. To solve a partial differential equation (PDE) numerically, we formulate it as a polynomia...
We propose a method for the approximation of solutions of PDEs with stochastic coefficients based on...
A Gaussian Process (GP) is a prominent mathematical framework for stochastic function approximation ...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
Accelerating the learning of Partial Differential Equations (PDEs) from experimental data will speed...
Making predictions and quantifying their uncertainty when the input data is sequential is a fundamen...
The basic problem considered here is to solve sparse systems of nonlinear equations. A system is co...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
We propose a new data-driven approach for learning the fundamental solutions (Green's functions) of ...
In this thesis, we present four algorithms for solving sparse nonlinear systems of equations: the pa...
Making predictions and quantifying their uncertainty when the input data is sequential is a fundamen...
We introduce a simple, rigorous, and unified framework for solving nonlinear partial differential eq...
This work studies sparse reconstruction techniques for approximating solutions of high-dimensional p...
A global regularized Gauss-Newton (GN) method is proposed to obtain a zero residual for square nonli...
Abstract. To solve a partial differential equation (PDE) numerically, we formulate it as a polynomia...
Abstract. To solve a partial differential equation (PDE) numerically, we formulate it as a polynomia...
We propose a method for the approximation of solutions of PDEs with stochastic coefficients based on...
A Gaussian Process (GP) is a prominent mathematical framework for stochastic function approximation ...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/15...
Accelerating the learning of Partial Differential Equations (PDEs) from experimental data will speed...
Making predictions and quantifying their uncertainty when the input data is sequential is a fundamen...
The basic problem considered here is to solve sparse systems of nonlinear equations. A system is co...
A wealth of computationally efficient approximation methods for Gaussian process regression have bee...
We propose a new data-driven approach for learning the fundamental solutions (Green's functions) of ...
In this thesis, we present four algorithms for solving sparse nonlinear systems of equations: the pa...
Making predictions and quantifying their uncertainty when the input data is sequential is a fundamen...