Cusp Catastrophe Polynomial Model: Power and Sample Size Estimation.

统计学期刊(英文) Pub Date : 2014-12-01 Epub Date: 2014-11-18 DOI:10.4236/ojs.2014.410076
Ding-Geng Din Chen, Xinguang Jim Chen, Feng Lin, Wan Tang, Y L Lio, Tammy Yuanyuan Guo
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引用次数: 10

Abstract

Guastello's polynomial regression method for solving cusp catastrophe model has been widely applied to analyze nonlinear behavior outcomes. However, no statistical power analysis for this modeling approach has been reported probably due to the complex nature of the cusp catastrophe model. Since statistical power analysis is essential for research design, we propose a novel method in this paper to fill in the gap. The method is simulation-based and can be used to calculate statistical power and sample size when Guastello's polynomial regression method is used to cusp catastrophe modeling analysis. With this novel approach, a power curve is produced first to depict the relationship between statistical power and samples size under different model specifications. This power curve is then used to determine sample size required for specified statistical power. We verify the method first through four scenarios generated through Monte Carlo simulations, and followed by an application of the method with real published data in modeling early sexual initiation among young adolescents. Findings of our study suggest that this simulation-based power analysis method can be used to estimate sample size and statistical power for Guastello's polynomial regression method in cusp catastrophe modeling.

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尖突变多项式模型:功率和样本量估计。
求解尖点突变模型的Guastello多项式回归方法已广泛应用于分析非线性行为结果。然而,可能由于尖点突变模型的复杂性,没有对这种建模方法进行统计能力分析的报道。由于统计功率分析对研究设计至关重要,因此本文提出了一种新颖的方法来填补这一空白。该方法基于仿真,可用于Guastello多项式回归法进行尖点突变建模分析时的统计功率和样本量计算。利用这种新颖的方法,首先产生功率曲线来描述不同模型规格下统计功率与样本量之间的关系。然后使用该功率曲线来确定指定统计功率所需的样本量。我们首先通过蒙特卡罗模拟生成的四个场景验证了该方法,然后将该方法与真实发表的数据应用于青少年早期性行为开始的建模。我们的研究结果表明,基于模拟的功率分析方法可以用于估计Guastello多项式回归方法在尖点突变建模中的样本量和统计功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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