Estimation of Ordinary Differential Equation Models with Discretization Error Quantification

被引:6
作者
Matsuda, Takeru [1 ,2 ]
Miyatake, Yuto [3 ]
机构
[1] Univ Tokyo, Dept Math Informat, Grad Sch Informat Sci & Technol, Tokyo 1138656, Japan
[2] RIKEN Ctr Brain Sci, Math Informat Collaborat Unit, Wako, Saitama 3510198, Japan
[3] Osaka Univ, Cybermedia Ctr, Osaka 5600043, Japan
关键词
discretization error; isotonic regression; parameter estimation; probabilistic numerics;
D O I
10.1137/19M1278405
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
We consider parameter estimation of ordinary differential equation (ODE) models from noisy observations. For this problem, one conventional approach is to fit numerical solutions (e.g., Euler, Runge-Kutta) of ODEs to data. However, such a method does not account for the discretization error in numerical solutions and has limited estimation accuracy. In this study, we develop an estimation method that quantifies the discretization error based on data. The key idea is to model the discretization error as random variables and estimate their variance simultaneously with the ODE parameter. The proposed method has the form of iteratively reweighted least squares, where the discretization error variance is updated with the isotonic regression algorithm and the ODE parameter is updated by solving a weighted least squares problem using the adjoint system. Experimental results demonstrate that the proposed method attains robust estimation with at least comparable accuracy to the conventional method by successfully quantifying the reliability of the numerical solutions.
引用
收藏
页码:302 / 331
页数:30
相关论文
共 39 条
[1]   Random time step probabilistic methods for uncertainty quantification in chaotic and geometric numerical integration [J].
Abdulle, Assyr ;
Garegnani, Giacomo .
STATISTICS AND COMPUTING, 2020, 30 (04) :907-932
[2]   Linear multistep methods, particle filtering and sequential Monte Carlo [J].
Arnold, Andrea ;
Calvetti, Daniela ;
Somersalo, Erkki .
INVERSE PROBLEMS, 2013, 29 (08)
[3]  
Barlow RE., 1972, STAT INFERENCE ORDER
[4]  
Boyd S., 2009, Convex Optimization, DOI DOI 10.1017/CBO9780511804441
[5]   Learning about physical parameters: the importance of model discrepancy [J].
Brynjarsdottir, Jenny ;
O'Hagan, Anthony .
INVERSE PROBLEMS, 2014, 30 (11)
[6]  
Butcher J. C., 2016, NUMERICAL METHODS OR
[7]   Bayesian Solution Uncertainty Quantification for Differential Equations [J].
Cockayne, Jon .
BAYESIAN ANALYSIS, 2016, 11 (04) :1290-1291
[8]   Bayesian Probabilistic Numerical Methods [J].
Cockayne, Jon ;
Oates, Chris J. ;
Sullivan, T. J. ;
Girolami, Mark .
SIAM REVIEW, 2019, 61 (04) :756-789
[9]   Statistical analysis of differential equations: introducing probability measures on numerical solutions [J].
Conrad, Patrick R. ;
Girolami, Mark ;
Sarkka, Simo ;
Stuart, Andrew ;
Zygalakis, Konstantinos .
STATISTICS AND COMPUTING, 2017, 27 (04) :1065-1082
[10]  
Ferguson T.S., 2017, A Course in Large Sample Theory, P51, DOI DOI 10.1201/9781315136288