Robustness in stochastic filtering and maximum likelihood estimation for SDEs

被引:0
|
作者
机构
[1] Diehl, Joscha
[2] 1,Friz, Peter K
[3] Mai, Hilmar
[4] Oberhauser, Harald
[5] Riedel, Sebastian
[6] Stannat, Wilhelm
来源
Diehl, Joscha | 2014年 / Springer Verlag卷 / 102期
关键词
Brownian movement - Nonlinear analysis - Signal processing - Continuous time systems - Maximum likelihood estimation - Stochastic systems - Differential equations - Nonlinear equations - Parameter estimation;
D O I
10.1007/978-3-319-08159-5__8
中图分类号
学科分类号
摘要
We consider complex stochastic systems in continuous time and space where the objects of interest are modelled via stochastic differential equations, in general high dimensional and with nonlinear coefficients. The extraction of quantifiable information from such systems has a long history and many aspects. We shall focus here on the perhaps most classical problems in this context: the filtering problem for nonlinear diffusions and the problem of parameter estimation, also for nonlinear and multidimensional diffusions. More specifically, we return to the question of robustness, first raised in the filtering community in the mid-1970s: will it be true that the conditional expectation of some observable of the signal process, given an observation (sample) path, depends continuously on the latter? Sadly, the answer here is no, as simple counterexamples show. Clearly, this is an unhappy state of affairs for users who effectively face an ill-posed situation: close observations may lead to vastly different predictions. A similar question can be asked in the context of (maximum likelihood) parameter estimation for diffusions. Some (apparently novel) counter examples show that, here again, the answer is no. Our contribution (Crisan et al., Ann Appl Probab 23(5):2139-2160, 2013); Diehl et al., A Levy-area between Brownian motion and rough paths with applications to robust non-linear filtering and RPDEs (2013, arXiv:1301.3799;Diehl et al., Pathwise stability of likelihood estimators for diffusions via rough paths (2013, arXiv:1311.1061) changed to yes, in other words: well-posedness is restored, provided one is willing or able to regard observations as rough paths in the sense of T. Lyons. © Springer International Publishing Switzerland 2014.
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