LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLING
In the present paper, Lévy-based error prediction in circular systematic sampling is developed. A model-based statistical setting as in Hobolth and Jensen (2002) is used, but the assumption that the measurement function is Gaussian is relaxed. The measurement function is represented as a periodic st...
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2013-06-01
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doaj-2371d7e794d84f46a2fb3a8acee8361c2020-11-25T00:34:41ZengSlovenian Society for Stereology and Quantitative Image AnalysisImage Analysis and Stereology1580-31391854-51652013-06-0132211712510.5566/ias.v32.p117-125890LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLINGKristjana Ýr Jónsdóttir0Eva B. Vedel Jensen1Aarhus UniversityAarhus UniversityIn the present paper, Lévy-based error prediction in circular systematic sampling is developed. A model-based statistical setting as in Hobolth and Jensen (2002) is used, but the assumption that the measurement function is Gaussian is relaxed. The measurement function is represented as a periodic stationary stochastic process X obtained by a kernel smoothing of a Lévy basis. The process X may have an arbitrary covariance function. The distribution of the error predictor, based on measurements in n systematic directions is derived. Statistical inference is developed for the model parameters in the case where the covariance function follows the celebrated p-order covariance model.http://www.ias-iss.org/ojs/IAS/article/view/972Fourier seriesLévy basisplanar particlesstationary stochastic processesstereologysystematic sampling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kristjana Ýr Jónsdóttir Eva B. Vedel Jensen |
spellingShingle |
Kristjana Ýr Jónsdóttir Eva B. Vedel Jensen LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLING Image Analysis and Stereology Fourier series Lévy basis planar particles stationary stochastic processes stereology systematic sampling |
author_facet |
Kristjana Ýr Jónsdóttir Eva B. Vedel Jensen |
author_sort |
Kristjana Ýr Jónsdóttir |
title |
LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLING |
title_short |
LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLING |
title_full |
LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLING |
title_fullStr |
LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLING |
title_full_unstemmed |
LÉVY-BASED ERROR PREDICTION IN CIRCULAR SYSTEMATIC SAMPLING |
title_sort |
lévy-based error prediction in circular systematic sampling |
publisher |
Slovenian Society for Stereology and Quantitative Image Analysis |
series |
Image Analysis and Stereology |
issn |
1580-3139 1854-5165 |
publishDate |
2013-06-01 |
description |
In the present paper, Lévy-based error prediction in circular systematic sampling is developed. A model-based statistical setting as in Hobolth and Jensen (2002) is used, but the assumption that the measurement function is Gaussian is relaxed. The measurement function is represented as a periodic stationary stochastic process X obtained by a kernel smoothing of a Lévy basis. The process X may have an arbitrary covariance function. The distribution of the error predictor, based on measurements in n systematic directions is derived. Statistical inference is developed for the model parameters in the case where the covariance function follows the celebrated p-order covariance model. |
topic |
Fourier series Lévy basis planar particles stationary stochastic processes stereology systematic sampling |
url |
http://www.ias-iss.org/ojs/IAS/article/view/972 |
work_keys_str_mv |
AT kristjanayrjonsdottir levybasederrorpredictionincircularsystematicsampling AT evabvedeljensen levybasederrorpredictionincircularsystematicsampling |
_version_ |
1725312076007604224 |