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Slice inverse regression with score functions

机译:带得分函数的切片逆回归

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We consider non-linear regression problems where we assume that the response depends non-linearly on a linear projection of the covariates. We propose score function extensions to sliced inverse regression problems, both for the first- order and second-order score functions. We show that they provably improve estimation in the population case over the non-sliced versions and we study finite sample estimators and their consistency given the exact score functions. We also propose to learn the score function as well, in two steps, i.e., first learning the score function and then learning the effective dimension reduction space, or directly, by solving a convex optimization problem regularized by the nuclear norm. We illustrate our results on a series of experiments.
机译:我们考虑非线性回归问题,其中我们假设响应非线性地取决于协变量的线性投影。对于一阶和二阶得分函数,我们提出了对切片逆回归问题的得分函数扩展。我们表明,在非分层版本中,它们可证明地改善了人口案例中的估计,并且我们研究了有限样本估计量及其在给定确切得分函数的情况下的一致性。我们还建议分两步学习分数函数,即首先学习分数函数,然后学习有效的降维空间,或者直接解决由核范数正则化的凸优化问题。我们通过一系列实验说明了我们的结果。

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