The "shape" of a planar curve and/or landmark configuration is considered its equivalence class under translation, rotation and scaling, its "form" its equivalence class under translation and rotation while scale is preserved. We extend generalized additive regression to models for such shapes/forms as responses respecting the resulting quotient geometry by employing the squared geodesic distance as loss function and a geodesic response function to map the additive predictor to the shape/form space. For fitting the model, we propose a Riemannian $L_2$-Boosting algorithm well suited for a potentially large number of possibly parameter-intensive model terms, which also yields automated model selection. We provide novel intuitively interpretable visualizations for (even non-linear) covariate effects in the shape/form space via suitable tensor-product factorization. The usefulness of the proposed framework is illustrated in an analysis of 1) astragalus shapes of wild and domesticated sheep and 2) cell forms generated in a biophysical model, as well as 3) in a realistic simulation study with response shapes and forms motivated from a dataset on bottle outlines.
翻译:平面曲线和(或)地标配置的“形状”在翻译、旋转和缩放中被视为等效类别,在标度保留时将其“成形”在翻译和旋转中的等值类别在翻译、旋转和旋转时被视为等效类别。我们通过使用平方大地测量距离作为损失函数和大地测量响应功能将添加预测器映射到形状/形状空间时,将这种形状/形状的模型扩展为符合由此得出的商数的模型的通用累加回归。我们提议了一种Riemannian $L_2$-boosting 算法,非常适合可能存在的大量参数密集型模型术语,这也会产生出自动模型选择。我们通过适当的发压产品因子化(甚至非线性)为形状/形状/形状的共变异性效果提供了新的直径可解释式模型。拟议框架的有用性体现在对以下分析中:1) 野生和家养羊的三角形形状和2) 生物物理模型生成的细胞形式,以及3) 进行现实的模拟研究,其反应形状和形式来自瓶形图中的数据组合。