Hu Chunyan,Hu Liangping,How to use analysis of variance correctly——an analysis of variance for the univariate quantitative data collected from the nested design[J].SICHUAN MENTAL HEALTH,2022,35(3):217-222
How to use analysis of variance correctly——an analysis of variance for the univariate quantitative data collected from the nested design
DOI:10.11886/scjsws20220510007
English keywords:Nested design  Fixed effects  Random effects  Mixed effects  Analysis of variance
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Author NameAffiliationPostcode
Hu Chunyan Graduate School Academy of Military Sciences PLA China Beijing 100850 China 100850
Hu Liangping* Graduate School Academy of Military Sciences PLA China Beijing 100850 China
Specialty Committee of Clinical Scientific Research Statistics of World Federation of Chinese Medicine Societies Beijing 100029 China 
100029
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English abstract:
      The purpose of this paper was to introduce the nested design and its quantitative data analysis of variance and the SAS implementation. If one of the following two characteristics existed in a specific experimental study, a nested design could be considered to arrange the experiment. Firstly, there was a nested relationship between factors in natural attributes. Secondly, with professional knowledge as the basis, the impact of each factor on the quantitative observation results was divided into primary and secondary. The first feature mentioned above meant that the factors related to the subjects had the conditions for grouping and regrouping. The second feature mentioned above meant that the status of each factor was unequal. In the variance analysis of quantitative data, the calculation formulas of variable error mean square was required to use. Based on four examples and with the help of the SAS software, this paper implemented the univariate analysis of variance for the quantitative data of the nested design, and gave the detailed explanations for the output results of SAS software.
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