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首页> 外文期刊>Journal of the American statistical association >Extrinsic Local Regression on Manifold-Valued Data
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Extrinsic Local Regression on Manifold-Valued Data

机译:流形值数据的外在局部回归

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摘要

We propose an extrinsic regression framework for modeling data with manifold valued responses and Euclidean predictors. Regression with manifold responses has wide applications in shape analysis, neuroscience, medical imaging, and many other areas. Our approach embeds the manifold where the responses lie onto a higher dimensional Euclidean space, obtains a local regression estimate in that space, and then projects this estimate back onto the image of the manifold. Outside the regression setting both intrinsic and extrinsic approaches have been proposed for modeling iid manifold-valued data. However, to our knowledge our work is the first to take an extrinsic approach to the regression problem. The proposed extrinsic regression framework is general, computationally efficient, and theoretically appealing. Asymptotic distributions and convergence rates of the extrinsic regression estimates are derived and a large class of examples is considered indicating the wide applicability of our approach. Supplementary materials for this article are available online.
机译:我们提出了一个外部回归框架,用于对具有多值响应和欧几里得预测因子的数据进行建模。具有多种响应的回归在形状分析,神经科学,医学成像和许多其他领域中具有广泛的应用。我们的方法将响应位于其中的流形嵌入更高维的欧式空间中,在该空间中获得局部回归估计,然后将该估计投影回流形图像上。在回归设置之外,已经提出了用于对同等流形值数据进行建模的内在方法和外在方法。但是,据我们所知,我们的工作是第一个对回归问题采用外部方法的方法。所提出的外部回归框架是通用的,计算有效的并且在理论上具有吸引力。得出了外在回归估计的渐近分布和收敛速度,并考虑了许多实例,表明我们的方法具有广泛的适用性。可在线获得本文的补充材料。

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