Department of Mathematics and Statistics, Loyola University Chicago, Chicago, IL, USA.
Department of Psychology, University of Utah, Salt Lake City, UT, USA.
Bull Math Biol. 2024 Mar 15;86(4):40. doi: 10.1007/s11538-024-01274-4.
Use of nonlinear statistical methods and models are ubiquitous in scientific research. However, these methods may not be fully understood, and as demonstrated here, commonly-reported parameter p-values and confidence intervals may be inaccurate. The gentle introduction to nonlinear regression modelling and comprehensive illustrations given here provides applied researchers with the needed overview and tools to appreciate the nuances and breadth of these important methods. Since these methods build upon topics covered in first and second courses in applied statistics and predictive modelling, the target audience includes practitioners and students alike. To guide practitioners, we summarize, illustrate, develop, and extend nonlinear modelling methods, and underscore caveats of Wald statistics using basic illustrations and give key reasons for preferring likelihood methods. Parameter profiling in multiparameter models and exact or near-exact versus approximate likelihood methods are discussed and curvature measures are connected with the failure of the Wald approximations regularly used in statistical software. The discussion in the main paper has been kept at an introductory level and it can be covered on a first reading; additional details given in the Appendices can be worked through upon further study. The associated online Supplementary Information also provides the data and R computer code which can be easily adapted to aid researchers to fit nonlinear models to their data.
在科学研究中,非线性统计方法和模型被广泛应用。然而,这些方法可能没有被完全理解,正如这里所展示的,常见的报告参数 p 值和置信区间可能是不准确的。这里提供的非线性回归建模的简介和全面的说明为应用研究人员提供了所需的概述和工具,以欣赏这些重要方法的细微差别和广度。由于这些方法建立在应用统计学和预测建模的第一和第二课程中涵盖的主题之上,目标受众包括从业者和学生。为了指导从业者,我们总结、说明、开发和扩展了非线性建模方法,并使用基本说明强调 Wald 统计的注意事项,并给出了偏好似然方法的关键原因。在多参数模型中进行参数剖析,以及精确或近似似然方法与统计软件中常用的 Wald 近似的失败之间的曲率度量进行了讨论。主要论文中的讨论保持在介绍性水平,可以在第一次阅读时涵盖;附录中给出的其他详细信息可以进一步研究。相关的在线补充信息还提供了数据和 R 计算机代码,可以轻松改编以帮助研究人员将非线性模型拟合到他们的数据中。