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Wiley InterScience | ||||||||||||||
![]() Journal of the Royal Statistical Society: Series B (Statistical Methodology)Volume 69 Issue 5, Pages 741 - 796 Published Online: 25 Oct 2007 © 2010 The Royal Statistical Society and Blackwell Publishing Ltd Published on behalf of the Royal Statistical Society
Abstract | References | Full Text: HTML, PDF (Size: 1854K) | Related Articles | Citation Tracking Parameter estimation for differential equations: a generalized smoothing approach Copyright 2007 Royal Statistical Society KEYWORDS Differential equation • Dynamic system • Estimating equation • Functional data analysis • Gauss • Newton method • Parameter cascade • Profiled estimation ABSTRACTSummary. We propose a new method for estimating parameters in models that are defined by a system of non-linear differential equations. Such equations represent changes in system outputs by linking the behaviour of derivatives of a process to the behaviour of the process itself. Current methods for estimating parameters in differential equations from noisy data are computationally intensive and often poorly suited to the realization of statistical objectives such as inference and interval estimation. The paper describes a new method that uses noisy measurements on a subset of variables to estimate the parameters defining a system of non-linear differential equations. The approach is based on a modification of data smoothing methods along with a generalization of profiled estimation. We derive estimates and confidence intervals, and show that these have low bias and good coverage properties respectively for data that are simulated from models in chemical engineering and neurobiology. The performance of the method is demonstrated by using real world data from chemistry and from the progress of the autoimmune disease lupus. [Read before The Royal Statistical Society at a meeting organized by the Research Section on Wednesday, May 9th, 2007, Professor T. J. Sweeting in the Chair] |
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![]() | Significance |
Try to forecast the results of 10 different events, some sporting, some cultural, some just odd, that will take place between May and July 2010. Have Fun! | |