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The limit of the partial sums process of spatial least squares residuals

机译:空间最小二乘残差的部分和过程的极限

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摘要

We establish a functional central limit theorem for a sequence of least squares residuals of spatial data from a linear regression model. Under mild assumptions on the model we explicitly determine the limit process in the case where the assumed linear model is true. Moreover, in the case where the assumed linear model is not true we explicitly establish the limit process for the localized true regression function under mild conditions. These results can be used to develop non-parametric model checks for linear regression. Our proofs generalize ideas of a univariate geometrical approach due to Bischoff [W. Bischoff, The structure of residual partial sums limit processes of linear regression models, Theory Stoch. Process. 8 (24) (2002) 23-28] which is different to that proposed by MacNeill and Jandhyala [I.B. MacNeill, V.K. Jandhyala, Change-point methods for spatial data, in: G.P. Patil, et al. (Eds.), Multivariate Environmental Statistics. Papers Presented at the 7th International Conference on Multivariate Analysis held at Pennsylvania State University, University Park, PA, USA, May 5-9 1992, in: Ser. Stat. Probab., vol. 6, North-Holland, Amsterdam, 1993, pp. 289-306 (in English)]. Moreover, Xie and MacNeill [L. Xie, I.B. MacNeill, Spatial residual processes and boundary detection, South African Statist. J. 40 (1) (2006) 33-53] established the limit process of set indexed partial sums of regression residuals. In our framework we get that result as an immediate consequence of a result of Alexander and Pyke [K.S. Alexander, R. Pyke, A uniform central limit theorem for set-indexed partial-sum processes with finite variance, Ann. Probab. 14 (1986) 582-597]. The reason for that is that by our geometrical approach we recognize the structure of the limit process: it is a projection of the Brownian sheet onto a certain subspace of the reproducing kernel Hilbert space of the Brownian sheet. Several examples are discussed.
机译:我们为线性回归模型中空间数据的最小二乘残差序列建立了一个功能中心极限定理。在对模型的温和假设下,我们在假定线性模型为真的情况下明确确定极限过程。此外,在假设线性模型不成立的情况下,我们明确建立了在温和条件下局部真实回归函数的极限过程。这些结果可用于开发用于线性回归的非参数模型检查。我们的证明归因于Bischoff [W. Bischoff,残差部分和的结构限制了线性回归模型的过程,Stoch理论。处理。 8(24)(2002)23-28]与MacNeill和Jandhyala提出的[I.B.麦克尼尔(V.K.) Jandhyala,空间数据的变更点方法,见:G.P。 Patil等。 (编),多元环境统计。 1992年5月5日至9日在美国宾夕法尼亚州大学公园市的宾夕法尼亚州立大学举行的第七届多变量分析国际会议上发表的论文。统计Probab。,第一卷6,北荷兰省,阿姆斯特丹,1993年,第289-306页(英语)。此外,谢和麦克尼尔[L.谢先生MacNeill,空间残差过程和边界检测,南非统计员。 J. 40(1)(2006)33-53]建立了回归残差的集合索引部分和的极限过程。在我们的框架中,我们得到的结果是Alexander和Pyke [K.S.亚历山大·R·皮克(Alexander,R.Pyke),具有有限方差的集索引部分和过程的统一中心极限定理,Ann。 Probab。 14(1986)582-597]。这样做的原因是,通过我们的几何方法,我们认识到极限过程的结构:它是Brownian片在Brownian片的再生内核Hilbert空间的某个子空间上的投影。讨论了几个例子。

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