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Non-Parametric Statistical Methods and Data Transformations in Agricultural Pest Population Studies

机译:农业害虫群体研究中的非参数统计方法和数据转化

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摘要

Analyzing data from agricultural pest populations regularly detects that they do not fulfill the theoretical requirements to implement classical ANOVA. Box-Cox transformations and nonparametric statistical methods are commonly used as alternatives to solve this problem. In this paper, we describe the results of applying these techniques to data from Thrips palmi Karny sampled in potato (Solanum tuberosum L.) plantations. The X2 test was used for the goodness-of-fit of negative binomial distribution and as a test of independence to investigate the relationship between plant strata and insect stages. Seven data transformations were also applied to meet the requirements of classical ANOVA, which failed to eliminate the relationship between mean and variance. Given this negative result, comparisons between insect population densities were made using the nonparametric Kruskal-Wallis ANOVA test. Results from this analysis allowed selecting the insect larval stage and plant middle stratum as keys to design pest sampling plans.
机译:分析来自农业害虫人群的数据定期检测到他们不符合实施经典ANOVA的理论要求。 Box-Cox转换和非参数统计方法通常用作解决此问题的替代方案。在本文中,我们描述了将这些技术应用于来自马铃薯(Solanum Tuberosum L.)种植园的蓟马基karny的数据。 X2试验用于负面二项分布的良好健康,作为独立性的测试,以研究植物地层与昆虫阶段之间的关系。还应用了七种数据转换以满足经典ANOVA的要求,这未能消除均值和方差之间的关系。鉴于这种负面结果,使用非参数Kruskal-Wallis Anova测试进行昆虫种群密度的比较。该分析的结果允许选择昆虫幼虫阶段和植物中间层作为设计害虫采样计划的钥匙。

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