非参数泛函回归中的维数诅咒及相关问题

IF 11 Q1 STATISTICS & PROBABILITY Statistics Surveys Pub Date : 2011-01-01 DOI:10.1214/09-SS049
G. Geenens
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引用次数: 91

摘要

近年来,一些非参数回归的思想被推广到函数回归的情况。在这个框架中,主要的关注来自于解释性对象的无限维度性质。具体来说,在经典的多元回归环境中,众所周知,任何非参数方法都受到所谓的“维数诅咒”的影响,这是由高维空间中数据的稀疏性引起的,导致回归函数估计器向目标曲线的最快收敛速度随着回归向量维数的增加而降低。因此,发现非参数泛函回归估计的理论性质非常糟糕并不奇怪,导致许多作者谴责这种方法。然而,仔细观察所研究的功能数据的意义和统计学家想从中得出的结论,可以从另一个角度考虑这个问题,并证明使用稍微修改的估计器是合理的。在大多数情况下,通过半度量来测量无限维函数空间中两个元素之间的接近度是完全合理的,这可以防止那些估计者遭受我们所谓的“无限维诅咒”。AMS 2000学科分类:初级62G08;二次62 m40。
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Curse of dimensionality and related issues in nonparametric functional regression
Recently, some nonparametric regression ideas have been extended to the case of functional regression. Within that framework, the main concern arises from the infinite dimensional nature of the explanatory objects. Specifically, in the classical multivariate regression context, it is well-known that any nonparametric method is affected by the socalled “curse of dimensionality”, caused by the sparsity of data in highdimensional spaces, resulting in a decrease in fastest achievable rates of convergence of regression function estimators toward their target curve as the dimension of the regressor vector increases. Therefore, it is not surprising to find dramatically bad theoretical properties for the nonparametric functional regression estimators, leading many authors to condemn the methodology. Nevertheless, a closer look at the meaning of the functional data under study and on the conclusions that the statistician would like to draw from it allows to consider the problem from another point-of-view, and to justify the use of slightly modified estimators. In most cases, it can be entirely legitimate to measure the proximity between two elements of the infinite dimensional functional space via a semi-metric, which could prevent those estimators suffering from what we will call the “curse of infinite dimensionality”. AMS 2000 subject classifications: Primary 62G08; secondary 62M40.
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来源期刊
Statistics Surveys
Statistics Surveys STATISTICS & PROBABILITY-
CiteScore
11.70
自引率
0.00%
发文量
5
期刊介绍: Statistics Surveys publishes survey articles in theoretical, computational, and applied statistics. The style of articles may range from reviews of recent research to graduate textbook exposition. Articles may be broad or narrow in scope. The essential requirements are a well specified topic and target audience, together with clear exposition. Statistics Surveys is sponsored by the American Statistical Association, the Bernoulli Society, the Institute of Mathematical Statistics, and by the Statistical Society of Canada.
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