Comparing nonparametric surfaces

A. Bowman
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引用次数: 15

Abstract

There is a wide variety of problems where the object of primary interest is a surface. Environmental studies in particular, where data often have a spatial structure, provide many examples where estimation of a surface is a central component of analysis. In these settings, the surfaces are often not well described by simple parametric models. Nonparametric regression therefore offers a convenient means of constructing surface estimates in a straightforward manner. In this paper, the issues associated with comparing such regression surfaces across different groups of data are discussed. Formal methods for assessing the equality of a collection of surfaces, or the suitability of a set of parallel surfaces, are described. These not only extend existing methods of nonparametric analysis of covariance but also allow the commonly occurring case of correlated errors to be incorporated. Graphical methods to provide insight into the sources of departure from a candidate model are also proposed. Several applications are provided to illustrate and explore the proposals.
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比较非参数曲面
在各种各样的问题中,主要感兴趣的对象是一个表面。特别是环境研究,其中的数据往往具有空间结构,提供了许多例子,其中对表面的估计是分析的中心组成部分。在这些情况下,表面通常不能用简单的参数化模型很好地描述。因此,非参数回归提供了一种以直接方式构造曲面估计的方便方法。在本文中,讨论了与跨不同数据组比较这种回归曲面相关的问题。描述了评估一组曲面的相等性或一组平行曲面的适宜性的形式化方法。这些方法不仅扩展了现有的协方差非参数分析方法,而且允许将常见的相关误差纳入其中。还提出了图形方法,以提供对偏离候选模型的来源的洞察。提供了几个应用来说明和探讨这些建议。
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