Simulation Studies of Three-Way Unbalanced Design on Fixed, Random, and Mixed Model

None Amalia Nailul Husna, None Muhammad Nur Aidi, None Indahwati, None Fitrah Ernawati
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Abstract

Analysis of Variance (ANOVA) is a statistical technique used to compare means from various samples. Generally, a balanced design is used in ANOVA, but in some conditions, an unbalanced design can happen when the sample size is different in each treatment. This design will have the calculation of the F-test is different from usual for fixed, random, and mixed models. In this research, a simulation study will be carried out to see the differences in the results of the F-test decision in a three-way ANOVA with an unbalanced design based on a fixed, random, and mixed model. Simulation data is generated based on several scenarios, small sample size and large sample size, e~Normal (0,1) and e~Gamma (2,3), and applied to 8 models, that combine fixed effects and random effects in a 3-factor design. The simulation shows that sample size, error distribution, and the used model can affect F-test decisions. Designs with large sample sizes and e~Normal (0,1) produce more significant F-test decisions than small sample sizes and e~Gamma (2,3), and model 1 or the fixed model has more significant F-test decisions than other models in each scenario.
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固定、随机和混合模型下的三向不平衡设计仿真研究
方差分析(ANOVA)是一种用于比较不同样本均值的统计技术。一般来说,在方差分析中使用平衡设计,但在某些情况下,当每次处理的样本量不同时,可能会出现不平衡设计。这种设计将有不同于通常的固定、随机和混合模型的f检验计算。在本研究中,将进行模拟研究,以了解基于固定,随机和混合模型的不平衡设计的三向方差分析中f检验决策结果的差异。模拟数据基于小样本量和大样本量、e~Normal(0,1)和e~Gamma(2,3)几种场景生成,应用于固定效应和随机效应相结合的8个模型,采用3因素设计。仿真结果表明,样本量、误差分布和使用的模型都会影响f检验的决策。具有大样本量和e~Normal(0,1)的设计比具有小样本量和e~Gamma(2,3)的设计产生更显著的f检验决策,并且模型1或固定模型在每个场景中比其他模型具有更显著的f检验决策。
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