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Efficiency loss and the linearity condition in dimension reduction

机译:尺寸减小中的效率损失和线性条件

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摘要

Linearity, sometimes jointly with constant variance, is routinely assumed in the context of sufficient dimension reduction. It is well understood that, when these conditions do not hold, blindly using them may lead to inconsistency in estimating the central subspace and the central mean subspace. Surprisingly, we discover that even if these conditions do hold, using them will bring efficiency loss. This paradoxical phenomenon is illustrated through sliced inverse regression and principal Hessian directions. The efficiency loss also applies to other dimension reduction procedures. We explain this empirical discovery by theoretical investigation.
机译:通常在充分减小尺寸的情况下通常假定线性度(有时与恒定方差结合)。众所周知,当不满足这些条件时,盲目使用它们可能导致估计中心子空间和中心均值子空间不一致。令人惊讶的是,我们发现即使这些条件成立,使用它们也会带来效率损失。通过切片逆回归和主要的Hessian方向可以说明这种自相矛盾的现象。效率损失也适用于其他尺寸缩减程序。我们通过理论研究来解释这一经验发现。

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