Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium test

ABSTRACT: Tetrazolium tests use conventional sampling techniques in which a sample has a fixed size. These tests may be improved by sequential sampling, which does not work with fixed-size samples. When data obtained from an experiment are analyzed sequentially the analysis can be terminated when a...

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Main Authors: Carla Regina Guimarães Brighenti, Marcelo Ângelo Cirillo, André Luís Alves Costa, Sttela Dellyzete Veiga Franco da Rosa, Renato Mendes Guimarães
Format: Article
Language:English
Published: Universidade de São Paulo
Series:Scientia Agricola
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162019001300198&lng=en&tlng=en
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spelling doaj-020511e569df48ab97bd7f7f921a8dc12020-11-24T20:56:24ZengUniversidade de São PauloScientia Agricola1678-992X76319820710.1590/1678-992x-2017-0123S0103-90162019001300198Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium testCarla Regina Guimarães BrighentiMarcelo Ângelo CirilloAndré Luís Alves CostaSttela Dellyzete Veiga Franco da RosaRenato Mendes GuimarãesABSTRACT: Tetrazolium tests use conventional sampling techniques in which a sample has a fixed size. These tests may be improved by sequential sampling, which does not work with fixed-size samples. When data obtained from an experiment are analyzed sequentially the analysis can be terminated when a particular decision has been made, and thus, there is no need to pre-establish the number of seeds to assess. Bayesian statistics can also help, if we have sufficient knowledge about coffee production in the area to construct a prior distribution. Therefore, we used the Bayesian sequential approach to estimate the percentage of viable coffee seeds submitted to tetrazolium testing, and we incorporated priors with information from other analyses of crops from previous years. We used the Beta prior distribution and, using data obtained from sample lots of Coffea arabica, determined its hyperparameters with a histogram and O’Hagan's methods. To estimate the lowest risk, we computed the Bayes risks, which provided us with a basis for deciding whether or not we should continue the sampling process. The results confirm that the Bayesian sequential estimation can indeed be used for the tetrazolium test: the average percentage of viability obtained with the conventional frequentist method was 88 %, whereas that obtained with the Bayesian method with both priors was 89 %. However, the Bayesian method required, on average, only 89 samples to reach this value while the traditional estimation method needed as many as 200 samples.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162019001300198&lng=en&tlng=enBeta distributionseed analysissamplingcoffeeprior distribution
collection DOAJ
language English
format Article
sources DOAJ
author Carla Regina Guimarães Brighenti
Marcelo Ângelo Cirillo
André Luís Alves Costa
Sttela Dellyzete Veiga Franco da Rosa
Renato Mendes Guimarães
spellingShingle Carla Regina Guimarães Brighenti
Marcelo Ângelo Cirillo
André Luís Alves Costa
Sttela Dellyzete Veiga Franco da Rosa
Renato Mendes Guimarães
Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium test
Scientia Agricola
Beta distribution
seed analysis
sampling
coffee
prior distribution
author_facet Carla Regina Guimarães Brighenti
Marcelo Ângelo Cirillo
André Luís Alves Costa
Sttela Dellyzete Veiga Franco da Rosa
Renato Mendes Guimarães
author_sort Carla Regina Guimarães Brighenti
title Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium test
title_short Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium test
title_full Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium test
title_fullStr Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium test
title_full_unstemmed Bayesian sequential procedure to estimate the viability of seeds Coffea arabica L. in tetrazolium test
title_sort bayesian sequential procedure to estimate the viability of seeds coffea arabica l. in tetrazolium test
publisher Universidade de São Paulo
series Scientia Agricola
issn 1678-992X
description ABSTRACT: Tetrazolium tests use conventional sampling techniques in which a sample has a fixed size. These tests may be improved by sequential sampling, which does not work with fixed-size samples. When data obtained from an experiment are analyzed sequentially the analysis can be terminated when a particular decision has been made, and thus, there is no need to pre-establish the number of seeds to assess. Bayesian statistics can also help, if we have sufficient knowledge about coffee production in the area to construct a prior distribution. Therefore, we used the Bayesian sequential approach to estimate the percentage of viable coffee seeds submitted to tetrazolium testing, and we incorporated priors with information from other analyses of crops from previous years. We used the Beta prior distribution and, using data obtained from sample lots of Coffea arabica, determined its hyperparameters with a histogram and O’Hagan's methods. To estimate the lowest risk, we computed the Bayes risks, which provided us with a basis for deciding whether or not we should continue the sampling process. The results confirm that the Bayesian sequential estimation can indeed be used for the tetrazolium test: the average percentage of viability obtained with the conventional frequentist method was 88 %, whereas that obtained with the Bayesian method with both priors was 89 %. However, the Bayesian method required, on average, only 89 samples to reach this value while the traditional estimation method needed as many as 200 samples.
topic Beta distribution
seed analysis
sampling
coffee
prior distribution
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162019001300198&lng=en&tlng=en
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