图间空间相关性试验方差的自回归分析:模拟研究

Q4 Medicine
D. Rossoni, R. R. Lima
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引用次数: 2

摘要

方差分析仍然是野外实验中最受欢迎的技术之一,尽管它的第一次提出已经将近一百年了。然而,在许多情况下,由于缺乏甚至忘记了假设,它的应用可能会受到一些损害。在一些实验中,研究人员使用了块来控制局部异质性,但在某些情况下,仅仅这样是不够的,特别是在数据具有一定空间依赖性的实验中。因此,为了提高处理间比较的准确性,另一种选择是考虑分析中变量的空间相关性研究。有了地块相对位置(参考数据)的知识,空间变异性可以作为一个积极因素,与实验结果相配合。为了开展这项研究,我们使用了模拟生成的数据。数据是根据随机完全区设计(RCBD)生成的,每个区有18个和5个处理;以及误差中空间依赖性的几种情况。我们比较了非空间分析(考虑误差独立)和空间分析(考虑自回归模型方差分析- ANOVA-AR)。利用空间统计工具对数据进行分析,通过减小均方误差,提高了分析的精度。我们还注意到均方块和均方处理的减少。ANOVA-AR3在大部分模拟情景中都有更大的减少,主要是在那些空间依赖性强的情景中。每个块少量处理的实验没有显示均方误差的减少,然而,均方块和均方处理的减少,加上数据具有空间依赖性这一事实,证明了ANOVA-AR的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AUTOREGRESSIVE ANALYSIS OF VARIANCE FOR EXPERIMENTS WITH SPATIAL DEPENDENCE BETWEEN PLOTS: A SIMULATION STUDY
The analysis of variance remains one of the most appreciated techniques of field experiment, even despite almost a hundred years of its first proposal. However, in many cases, its application can be several impaired due the fact of lack – or even forgotten - of assumptions. In several experiments, the researchers make use of blocks to control the local heterogeneity, nevertheless, in some cases, only this it cannot be enough, especially in experiments where the data have some kind of spatial dependence. Therefore, to increase the accuracy of comparisons between treatments, an alternative is to consider the study of the spatial dependence of the variables in the analysis. With the knowledge of the relative positions of the plots (referenced data), the spatial variability can be used as a positive factor, collaborating with the experimental results. To develop this study we used data generated by simulation. The data was generated according a Randomized Complete Block Design (RCBD), with eighteen and five treatments per block; and several scenarios of spatial dependence in the error. We compared the non-spatial analysis (which considers the errors independent) with spatial analysis (analysis of variance considering the autoregressive model - ANOVA-AR). The use of spatial statistical tools in the analysis of data increased the precision of the analysis, through the reduction of the Mean Squared Error. We also noticed a reduction of Mean Squared Block and Mean Squared Treatment. The greater reduction was notice in ANOVA-AR3 for great part of the simulated scenarios, mainly in those with strong spatial dependence. The experiments with a small number of treatments per block did not present a reduction of Mean Squared Error, however, the reduction of Mean Squared Block and Mean Squared Treatment, ally to the fact that data are spatial dependent justify the use of ANOVA-AR.
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来源期刊
Revista Brasileira de Biometria
Revista Brasileira de Biometria Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
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