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Correcting the bias in least squares regression with volume-rescaled sampling

机译:用体积缩放后的采样校正最小二乘回归中的偏差

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Consider linear regression where the examples are generated by an unknown distribution on R^d x R. Without any assumptions on the noise, the linear least squares solution for any i.i.d. sample will typically be biased w.r.t. the least squares optimum over the entire distribution. However, we show that if an i.i.d. sample of any size k is augmented by a certain small additional sample, then the solution of the combined sample becomes unbiased. We show this when the additional sample consists of d points drawn jointly according to the input distribution rescaled by the squared volume spanned by the points. Furthermore, we propose algorithms to sample from this volume-rescaled distribution when the data distribution is only known through an i.i.d sample.
机译:考虑线性回归,其中示例由R ^ d x R上的未知分布生成。在不对噪声进行任何假设的情况下,任何i.d.的线性最小二乘解。样本通常会在w.r.t.在整个分布中最小二乘方最优。但是,我们证明了如果i.i.d.任何大小为k的样本都将增加一些小的样本,然后合并样本的解将变得无偏。当附加样本由根据输入分布重新绘制的d个点组成时,我们将展示此点。此外,当数据分布仅通过i.d.样本已知时,我们提出了从这种体积重新缩放的分布中进行采样的算法。

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