玉米典型相关分析的样本量

IF 1.2 4区 农林科学 Q2 AGRICULTURE, MULTIDISCIPLINARY Bragantia Pub Date : 2022-01-01 DOI:10.1590/1678-4499.20210335
A. Cargnelutti Filho, M. Toebe
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引用次数: 0

摘要

典型相关分析已经成功地应用于许多领域,旨在从一对数据集中提取重要信息。因此,这项工作的目的是确定估计玉米特性典型相关性所需的样本量(植物数量)。2008/2009作物年度单交、三交和双交杂交种分别为361株、373株和416株,2009/2010作物年度单交、三交和双交杂交种分别为1777株、1693株和1720株(6例)。对植株结构特征组(收获时株高和插穗高度)与籽粒产量(百粒质量和单株籽粒质量)(情景1)进行典型相关分析;以及穗的尺寸(穗长和穗径)与籽粒产量(百粒质量和每株籽粒质量)之间的关系(情景2)。典型相关性估计的样本量(植株数量)是通过替换和应用高原线性响应模型的重新采样来确定的。对270株玉米进行测量,就足以估计每组玉米具有两种性状的群体之间的典型相关性。该样本量可作为可靠的典型相关分析的参考。
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Sample size for canonical correlation analysis in corn
: The canonical correlation analysis has been successfully used in many areas aiming to extract important information from a pair of data sets. Thus, the objective of this work was to determine the sample size (number of plants) required to estimate the canonical correlations in corn characteristics. Six characteristics were measured in 361, 373, and 416 plants, respectively, of the single, three-way and double cross hybrids of the 2008/2009 crop year and in 1,777, 1,693, and 1,720 plants, respectively, of the single, three-way, and double cross hybrids (2009/2010 crop) (six cases). The canonical correlation analyses were carried out between characteristics group of the plant architecture (plant height at harvest and ear insertion height) versus grain production (hundred grains mass and grains mass per plant) (scenario 1), and dimensions of ear (ear length and ear diameter) versus grain production (hundred grains mass and grains mass per plant) (scenario 2). The sample size (number of plants) for the estimation of canonical correlations was determined by resampling with replacement and application of the model linear response with plateau. Measuring 270 plants is sufficient to estimate the canonical correlation between groups with two characteristics in each group for corn. This sample size can be used as reference for reliable canonical correlation analysis.
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来源期刊
Bragantia
Bragantia AGRICULTURE, MULTIDISCIPLINARY-
CiteScore
2.40
自引率
8.30%
发文量
33
审稿时长
4 weeks
期刊介绍: Bragantia é uma revista de ciências agronômicas editada pelo Instituto Agronômico da Agência Paulista de Tecnologia dos Agronegócios, da Secretaria de Agricultura e Abastecimento do Estado de São Paulo, com o objetivo de publicar trabalhos científicos originais que contribuam para o desenvolvimento das ciências agronômicas. A revista é publicada desde 1941, tornando-se semestral em 1984, quadrimestral em 2001 e trimestral em 2005. É filiada à Associação Brasileira de Editores Científicos (ABEC).
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