Bhattacharya Abhishek, Dunson David B
Department of Statistical Science, Box 90251 , Duke University , Durham, North Carolina 27708-0251 , U.S.A.
Biometrika. 2010 Dec;97(4):851-865. doi: 10.1093/biomet/asq044. Epub 2010 Sep 21.
Statistical analysis on landmark-based shape spaces has diverse applications in morphometrics, medical diagnostics, machine vision and other areas. These shape spaces are non-Euclidean quotient manifolds. To conduct nonparametric inferences, one may define notions of centre and spread on this manifold and work with their estimates. However, it is useful to consider full likelihood-based methods, which allow nonparametric estimation of the probability density. This article proposes a broad class of mixture models constructed using suitable kernels on a general compact metric space and then on the planar shape space in particular. Following a Bayesian approach with a nonparametric prior on the mixing distribution, conditions are obtained under which the Kullback-Leibler property holds, implying large support and weak posterior consistency. Gibbs sampling methods are developed for posterior computation, and the methods are applied to problems in density estimation and classification with shape-based predictors. Simulation studies show improved estimation performance relative to existing approaches.
基于地标点的形状空间的统计分析在形态计量学、医学诊断、机器视觉和其他领域有多种应用。这些形状空间是非欧几里得商流形。为了进行非参数推断,可以在这个流形上定义中心和离散度的概念,并使用它们的估计值。然而,考虑基于完全似然的方法是有用的,这种方法允许对概率密度进行非参数估计。本文提出了一类广泛的混合模型,该模型首先在一般紧致度量空间上,然后特别在平面形状空间上使用合适的核函数构建。遵循对混合分布采用非参数先验的贝叶斯方法,得到了Kullback-Leibler性质成立的条件,这意味着具有大支撑和弱后验一致性。开发了吉布斯采样方法用于后验计算,并将这些方法应用于基于形状的预测变量的密度估计和分类问题。模拟研究表明,相对于现有方法,估计性能有所提高。