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Functional Classification with Margin Conditions

机译:具有保证金条件的功能分类

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摘要

Let (X, Y) be a X x {0, 1}-valued random pair and consider a sample (X_1, Y_1),..., (X_n, Y_n) drawn from the distribution of (X, Y). We aim at constructing from this sample a classifier that is a function which would predict the value of Y from the observation of X. The special case where X is a functional space is of particular interest due to the so called curse of dimensionality. In a recent paper, Biau et al. [1] propose to filter the X_i's in the Fourier basis and to apply the classical k狽earest Neighbor rule to the first d coefficients of the expansion. The selection of both k and d is made automatically via a penalized criterion. We extend this study, and note here the penalty used by Biau et al. is too heavy when we consider the minimax point of view under some margin type assumptions. We prove that using a penalty of smaller order or equal to zero is preferable both in theory and practice. Our experimental study furthermore shows that the introduction of a small-order penalty stabilizes the selection process, while preserving rather good performances.
机译:令(X,Y)为X x {0,1}值的随机对,并考虑从(X,Y)的分布中得出的样本(X_1,Y_1),...,(X_n,Y_n)。我们的目标是从该样本中构造一个分类器,该分类器可以根据X的观察预测Y的值。由于所谓的维数诅咒,特别有趣的是X是一个功能空间。在最近的论文中,Biau等人。 [1]建议在傅立叶基础上对X_i进行滤波,并将经典的最近邻规则应用于展开的前d个系数。通过惩罚标准自动选择k和d。我们扩展了这项研究,并在此指出Biau等人使用的惩罚。当我们在某些保证金类型假设下考虑极小极大值的观点时,它太重了。我们证明,在理论上和实践上,使用较小阶数或等于零的惩罚都是可取的。我们的实验研究进一步表明,引入小量罚分可以稳定选择过程,同时保持相当好的性能。

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