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UNDERSTANDING AND UTILIZING THE LINEARITY CONDITION IN DIMENSION REDUCTION

机译:在减少尺寸下理解和利用线性条件

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摘要

When using inverse regression methods in dimension reduction models, the popular linearity condition has a paradoxical effect: ignoring the linearity condition yields a more efficient estimator than making use of the linearity condition. By considering classes of parametric models, which include the linearity condition as a special case, we examine this phenomenon using a geometry approach, and provide an intuitive and extended explanation. Our findings explain what the real cause of the paradox is, indicate how to properly handle the linearity condition and reveal the true role of the linearity condition. Our analysis directly leads to new estimators that further improve the existing efficient estimator that did not specifically account for the linearity condition and the possible constant variance condition.
机译:当在尺寸减少模型中使用反逆回归方法时,流行的线性条件具有矛盾的效果:忽略线性度条件产生比利用线性条件更有效的估计。 通过考虑包括线性条件作为特殊情况的参数模型的类别,我们使用几何方法来检查这种现象,并提供直观和扩展的解释。 我们的研究结果解释了悖论的真正原因是,表明如何正确处理线性条件并揭示线性条件的真正作用。 我们的分析直接导致新的估计,进一步改进了现有的高效估算器,该估算器没有特别考虑线性条件和可能的恒定方差条件。

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