Wang Yueying, Wang Guannan, Klinedinst Brandon, Willette Auriel, Wang Li
Amazon.com, Inc., Bellevue, WA 98170, USA.
William & Mary, Williamsburg, VA 23185, USA.
Stat Sin. 2025 Jul;35(3):1451-1477. doi: 10.5705/ss.202023.0071.
The use of complex three-dimensional (3D) objects is growing in various applications as data collection techniques continue to evolve. Identifying and locating significant effects within these objects is essential for making informed decisions based on the data. This article presents an advanced nonparametric method for learning and inferring complex 3D objects, enabling accurate estimation of the underlying signals and efficient detection and localization of significant effects. The proposed method addresses the problem of analyzing irregular-shaped 3D objects by modeling them as functional data and utilizing trivariate spline smoothing based on triangulations to estimate the underlying signals. We develop a highly efficient procedure that accurately estimates the mean and covariance functions, as well as the eigenvalues and eigenfunctions. Furthermore, we rigorously establish the asymptotic properties of these estimators. Additionally, a novel approach for constructing simultaneous confidence corridors to quantify estimation uncertainty is presented, and the procedure is extended to accommodate comparisons between two independent samples. The finite-sample performance of the proposed methods is illustrated through numerical experiments and a real-data application using the Alzheimer's Disease Neuroimaging Initiative database.
随着数据收集技术不断发展,复杂三维(3D)物体在各种应用中的使用日益增加。在这些物体中识别和定位显著效应对于基于数据做出明智决策至关重要。本文提出了一种用于学习和推断复杂3D物体的先进非参数方法,能够准确估计潜在信号,并有效检测和定位显著效应。所提出的方法通过将不规则形状的3D物体建模为函数数据,并利用基于三角剖分的三变量样条平滑来估计潜在信号,从而解决了分析不规则形状3D物体的问题。我们开发了一种高效程序,能够准确估计均值和协方差函数以及特征值和特征函数。此外,我们严格确立了这些估计量的渐近性质。此外,还提出了一种构建同时置信区间以量化估计不确定性的新颖方法,并将该程序扩展以适应两个独立样本之间的比较。通过数值实验和使用阿尔茨海默病神经影像学倡议数据库的实际数据应用,展示了所提出方法的有限样本性能。