Defining shape and form as equivalence classes under translation, rotation and -- for shapes -- also scale, we extend generalized additive regression to models for the shape/form of planar curves or landmark configurations. The model respects the resulting quotient geometry of the response, employing the squared geodesic distance as loss function and a geodesic response function mapping 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 yiels automated model selection. We provide novel intuitively interpretable visualizations for (even non-linear) covariate effects in the shape/form space via suitable tensor based factorizations. 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:将形状和形式定义为正在翻译中的等值分类、旋转和 -- -- 形状 -- -- 也标度,我们将通用的累加回归扩展为平面曲线或里程碑形配置的形状/形状模型。该模型尊重由此得出的响应的商数几何,将平方大地距离用作损失函数,并将添加预测器绘制成形状/形状空间的大地测量响应功能。为适应模型,我们提议了一个Riemannian $L_2$-boosting算法,非常适合可能为数众多的参数密集型模型术语,这些参数也自动选择了 yiels 模型。我们通过适当的加仑基因子化,为形状/形状空间提供了新的直观可解释的共变法效果。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,以及(2) 生物物理模型生成的细胞形式,以及(3) 在现实的模拟研究中,根据瓶样板上的数据集生成的反应形状和形式。