quantile regression of nonlinear models to describe different levels of dry matter accumulation in garlic plants
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2018
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Abstract
ABSTRACT: Plant growth analyses are important because they generate information on the demand and necessary care for each development stage of a plant. Nonlinear regression models are appropriate for the description of curves of growth, since they include parameters with practical biological interpretation. However, these models present information in terms of the conditional mean, and they are subject to problems in the adjustment caused by possible outliers or asymmetry in the distribution of the data. Quantile regression can solve these problems, and it allows the estimation of different quantiles, generating more complete and robust results. The objective of this research was to adjust a nonlinear quantile regression model for the study of dry matter accumulation in garlic plants (Allium sativum L.) over time, estimating parameters at three different quantiles and classifying each garlic accession according to its growth rate and asymptotic weight. The nonlinear regression model fitted was a Logistic model, and 30 garlic accessions were evaluated. These 30 accessions were divided based on the model with the closest quantile estimates; 12 accessions were classified as of lesser interest for planting, 6 were classified as intermediate, and 12 were classified as of greater interest for planting.
| Reference Key |
puiatti2018cinciaquantile
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| Authors | ;Guilherme Alves Puiatti;Paulo Roberto Cecon;Moysés Nascimento;Ana Carolina Campana Nascimento;Antônio Policarpo Souza Carneiro;Fabyano Fonseca e Silva;Mário Puiatti;Ana Carolina Ribeiro de Oliveira |
| Journal | Trials |
| Year | 2018 |
| DOI |
10.1590/0103-8478cr20170322
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| URL | |
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