利用非参数纵向回归模型分析形状数据的Procrustes旋转

Pub Date : 2023-12-03 DOI:10.1007/s42952-023-00241-4
Meisam Moghimbeygi, Mousa Golalizadeh
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引用次数: 0

摘要

形状作为一个内在概念,在某些统计分析环境中可以被视为信息来源。例如,形态学的一个重要课题是研究形状随时间的变化。从拓扑学的角度来看,形状数据是一个特定流形上的点,因此建立一个纵向模型来处理形状变化并不像想象的那么简单。与使用普通参数模型来完成这样的任务不同,我们在非参数框架的背景下调用Procrustes分析,并提出一个简单但有用的模型来处理形状变化。将问题转化为非参数回归模型后,利用加权最小二乘法对相关参数进行估计。此外,我们说明了在模拟研究和分析两个生物数据集中实现这个新模型。与其他模型相比,我们所提出的模型显示出其优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Nonparametric longitudinal regression model to analyze shape data using the Procrustes rotation

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Nonparametric longitudinal regression model to analyze shape data using the Procrustes rotation

Shape, as an intrinsic concept, can be considered as a source of information in some statistical analysis contexts. For instance, one of the important topics in morphology is to study the shape changes along time. From a topological viewpoint, shape data are points on a particular manifold and so to construct a longitudinal model for treating shape variation is not as trivial as thought. Unlike using the common parametric models to do such a task, we invoke Procrustes analysis in the context of a nonparametric framework and propose a simple, yet useful, model to deal with shape changes. After conveying the problem into the nonparametric regression model, we utilize the weighted least squares method to estimates the related parameters. Also, we illustrate implementing this new model in simulation studies and analyzing two biological data sets. Our proposed model shows its superiority while compared with other counterpart models.

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