Non-parametric estimation of non-linear diffusion coefficient in parabolic SPDEs
By: Martin Andersson , Benny Avelin , Valentin Garino and more
Potential Business Impact:
Helps predict hidden patterns in messy data.
In this article, we introduce a novel non-parametric predictor, based on conditional expectation, for the unknown diffusion coefficient function $\sigma$ in the stochastic partial differential equation $Lu = \sigma(u)\dot{W}$, where $L$ is a parabolic second order differential operator and $\dot{W}$ is a suitable Gaussian noise. We prove consistency and derive an upper bound for the error in the $L^p$ norm, in terms of discretization and smoothening parameters $h$ and $\varepsilon$. We illustrate the applicability of the approach and the role of the parameters with several interesting numerical examples.
Similar Papers
Nonparametric Inference for Noise Covariance Kernels in Parabolic SPDEs using Space-Time Infill-Asymptotics
Statistics Theory
Helps understand hidden patterns in complex equations.
Estimation for linear parabolic SPDEs in two space dimensions with unknown damping parameters
Statistics Theory
Finds hidden numbers in messy science data.
Parameter Estimation for Weakly Interacting Hypoelliptic Diffusions
Statistics Theory
Helps understand how many tiny things move together.