Non-Parametric Signal Interpolation
This paper considers the problem of interpolation (smoothing) of a partially observable Markov random sequence. For the dynamic observation models, an equation for the interpolation of the posterior probability density is derived. The main goal of this paper is to consider the smoothing problem for...
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doaj-fbaeb361632b4c159c1c948d1e821e192021-04-22T12:34:13ZengAustrian Statistical SocietyAustrian Journal of Statistics1026-597X2016-04-0137110.17713/ajs.v37i1.283Non-Parametric Signal InterpolationAlexandr V. Dobrovidov0Russian Academy of Sciences, Moscow, RussiaThis paper considers the problem of interpolation (smoothing) of a partially observable Markov random sequence. For the dynamic observation models, an equation for the interpolation of the posterior probability density is derived. The main goal of this paper is to consider the smoothing problem for the case of unknown distributions of an unobservable component of a random Markov sequence. Successful results were obtained for the strongly stationary Markov processes with mixing and for the conditional density belonging to the exponential family of densities. The resulting method is based on the empirical Bayes approach and kernel nonparametric estimation. The equation for the optimal smoothing estimator is derived in the form independent of unknown distributions of an unobservable process. Such form of the equation allows to use the nonparametric estimates for some conditional functionals in the equation given a set of dependent observations. To compare the nonparametric estimators with optimal mean square smoothing estimators in Kalman scheme, simulation results are given. http://www.ajs.or.at/index.php/ajs/article/view/283 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Alexandr V. Dobrovidov |
spellingShingle |
Alexandr V. Dobrovidov Non-Parametric Signal Interpolation Austrian Journal of Statistics |
author_facet |
Alexandr V. Dobrovidov |
author_sort |
Alexandr V. Dobrovidov |
title |
Non-Parametric Signal Interpolation |
title_short |
Non-Parametric Signal Interpolation |
title_full |
Non-Parametric Signal Interpolation |
title_fullStr |
Non-Parametric Signal Interpolation |
title_full_unstemmed |
Non-Parametric Signal Interpolation |
title_sort |
non-parametric signal interpolation |
publisher |
Austrian Statistical Society |
series |
Austrian Journal of Statistics |
issn |
1026-597X |
publishDate |
2016-04-01 |
description |
This paper considers the problem of interpolation (smoothing) of a partially observable Markov random sequence. For the dynamic observation models, an equation for the interpolation of the posterior probability density is derived. The main goal of this paper is to consider the smoothing problem for the case of unknown distributions of an unobservable component of a random Markov sequence. Successful results were obtained for the strongly stationary Markov processes with mixing and for the conditional density belonging to the exponential family of densities. The resulting method is based on the empirical Bayes approach and kernel nonparametric estimation. The equation for the optimal smoothing estimator is derived in the form independent of unknown distributions of an unobservable process. Such form of the equation allows to use the nonparametric estimates for some conditional functionals in the equation given a set of dependent observations. To compare the nonparametric estimators with optimal mean square smoothing estimators in Kalman scheme, simulation results are given.
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url |
http://www.ajs.or.at/index.php/ajs/article/view/283 |
work_keys_str_mv |
AT alexandrvdobrovidov nonparametricsignalinterpolation |
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1721514520235474944 |