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首页> 外文期刊>European Physical Journal, H. Historical Perspectives on Contemporary Physics >SINGLE AND MULTIPLE INDEX FUNCTIONAL REGRESSION MODELS WITH NONPARAMETRIC LINK
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SINGLE AND MULTIPLE INDEX FUNCTIONAL REGRESSION MODELS WITH NONPARAMETRIC LINK

机译:具有非参数链接的单索引和多索引函数回归模型

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摘要

Fully nonparametric methods for regression from functional data have poor accuracy from a statistical viewpoint, reflecting the fact that their convergence rates are slower than nonparametric rates for the estimation of high-dimensional functions. This difficulty has led to an emphasis on the so-called functional linear model, which is much more flexible than common linear models in finite dimension, but nevertheless imposes structural constraints on the relationship between predictors and responses. Recent advances have extended the linear approach by using it in conjunction with link functions, and by considering multiple indices, but the flexibility of this technique is still limited. For example, the link may be modeled parametrically or on a grid only, or may be constrained by an assumption such as monotonicity; multiple indices have been modeled by making finite-dimensional assumptions. In this paper we introduce a new technique for estimating the link function nonparametrically, and we suggest an approach to multi-index modeling using adaptively defined linear projections of functional data. We show that our methods enable prediction with polynomial convergence rates. The finite sample performance of our methods is studied in simulations, and is illustrated by an application to a functional regression problem.
机译:从统计角度来看,用于从功能数据进行回归的完全非参数方法的准确性较差,这反映了以下事实:对于高维函数的估计,其收敛速度比非参数速度慢。这种困难导致人们对所谓的函数线性模型的重视,该函数线性模型在有限维上比普通线性模型要灵活得多,但是仍然对预测变量和响应之间的关系施加了结构性约束。通过将线性方法与链接函数结合使用,并考虑了多个索引,最近的进展扩展了线性方法,但是该技术的灵活性仍然有限。例如,链接可以参数化建模或仅在网格上建模,或者可以受诸如单调性之类的假设约束。多个索引已通过进行有限维假设进行建模。在本文中,我们介绍了一种用于非参数估计链接函数的新技术,并提出了一种使用自适应定义的功能数据线性投影进行多索引建模的方法。我们证明了我们的方法能够实现多项式收敛速度的预测。我们的方法的有限样本性能在仿真中进行了研究,并通过对函数回归问题的应用加以说明。

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