联合回归分析中的最大似然与L2环境指数

D. G. Pereira
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引用次数: 0

摘要

本文描述了不完全基因型x环境数据的迭代分析。引入L2环境指标,利用联合回归分析(JRA)对不完全块实验进行分析。我们现在展示了如何,一旦假设产量的正态性,引入L2环境指数为联合回归分析提供了理论框架。利用该框架,得到了极大似然估计量,并推导了似然比检验。注意到该技术允许数据的不等加权,并讨论了完整块的特殊情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maximum Likelihood and L2 Environmental Indices in Joint Regression Analysis
Summary This paper describes an iterative analysis of incomplete genotype × environment data. L2 environmental indices were introduced to enable the use of Joint Regression Analysis (JRA) in analyzing experiments with incomplete blocks. We now show how, once normality of yields is assumed, the introduction of L2 environmental indices provides a theoretical framework for Joint Regression Analysis. Using this framework, maximum likelihood estimators are obtained and likelihood ratio tests are derived. It is noted that the technique allows unequal weighting of data, and the special case of complete blocks is discussed.
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