D. Crisan, P. Del Moral, A. Jasra, Hamza M. Ruzayqat
{"title":"Log-normalization constant estimation using the ensemble Kalman–Bucy filter with application to high-dimensional models","authors":"D. Crisan, P. Del Moral, A. Jasra, Hamza M. Ruzayqat","doi":"10.1017/apr.2021.62","DOIUrl":null,"url":null,"abstract":"Abstract In this article we consider the estimation of the log-normalization constant associated to a class of continuous-time filtering models. In particular, we consider ensemble Kalman–Bucy filter estimates based upon several nonlinear Kalman–Bucy diffusions. Using new conditional bias results for the mean of the aforementioned methods, we analyze the empirical log-scale normalization constants in terms of their \n$\\mathbb{L}_n$\n -errors and \n$\\mathbb{L}_n$\n -conditional bias. Depending on the type of nonlinear Kalman–Bucy diffusion, we show that these are bounded above by terms such as \n$\\mathsf{C}(n)\\left[t^{1/2}/N^{1/2} + t/N\\right]$\n or \n$\\mathsf{C}(n)/N^{1/2}$\n ( \n$\\mathbb{L}_n$\n -errors) and \n$\\mathsf{C}(n)\\left[t+t^{1/2}\\right]/N$\n or \n$\\mathsf{C}(n)/N$\n ( \n$\\mathbb{L}_n$\n -conditional bias), where t is the time horizon, N is the ensemble size, and \n$\\mathsf{C}(n)$\n is a constant that depends only on n, not on N or t. Finally, we use these results for online static parameter estimation for the above filtering models and implement the methodology for both linear and nonlinear models.","PeriodicalId":53160,"journal":{"name":"Advances in Applied Probability","volume":"54 1","pages":"1139 - 1163"},"PeriodicalIF":0.9000,"publicationDate":"2021-01-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"4","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Advances in Applied Probability","FirstCategoryId":"100","ListUrlMain":"https://doi.org/10.1017/apr.2021.62","RegionNum":4,"RegionCategory":"数学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"STATISTICS & PROBABILITY","Score":null,"Total":0}
引用次数: 4
Abstract
Abstract In this article we consider the estimation of the log-normalization constant associated to a class of continuous-time filtering models. In particular, we consider ensemble Kalman–Bucy filter estimates based upon several nonlinear Kalman–Bucy diffusions. Using new conditional bias results for the mean of the aforementioned methods, we analyze the empirical log-scale normalization constants in terms of their
$\mathbb{L}_n$
-errors and
$\mathbb{L}_n$
-conditional bias. Depending on the type of nonlinear Kalman–Bucy diffusion, we show that these are bounded above by terms such as
$\mathsf{C}(n)\left[t^{1/2}/N^{1/2} + t/N\right]$
or
$\mathsf{C}(n)/N^{1/2}$
(
$\mathbb{L}_n$
-errors) and
$\mathsf{C}(n)\left[t+t^{1/2}\right]/N$
or
$\mathsf{C}(n)/N$
(
$\mathbb{L}_n$
-conditional bias), where t is the time horizon, N is the ensemble size, and
$\mathsf{C}(n)$
is a constant that depends only on n, not on N or t. Finally, we use these results for online static parameter estimation for the above filtering models and implement the methodology for both linear and nonlinear models.
期刊介绍:
The Advances in Applied Probability has been published by the Applied Probability Trust for over four decades, and is a companion publication to the Journal of Applied Probability. It contains mathematical and scientific papers of interest to applied probabilists, with emphasis on applications in a broad spectrum of disciplines, including the biosciences, operations research, telecommunications, computer science, engineering, epidemiology, financial mathematics, the physical and social sciences, and any field where stochastic modeling is used.
A submission to Applied Probability represents a submission that may, at the Editor-in-Chief’s discretion, appear in either the Journal of Applied Probability or the Advances in Applied Probability. Typically, shorter papers appear in the Journal, with longer contributions appearing in the Advances.