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Bias-corrected diagonal discriminant rules for high-dimensional classification.

机译:偏差校正的对角线判别规则,用于高维分类。

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摘要

Diagonal discriminant rules have been successfully used for high-dimensional classification problems, but suffer from the serious drawback of biased discriminant scores. In this article, we propose improved diagonal discriminant rules with bias-corrected discriminant scores for high-dimensional classification. We show that the proposed discriminant scores dominate the standard ones under the quadratic loss function. Analytical results on why the bias-corrected rules can potentially improve the predication accuracy are also provided. Finally, we demonstrate the improvement of the proposed rules over the original ones through extensive simulation studies and real case studies.
机译:对角判别规则已经成功地用于高维分类问题,但是遭受偏见判别分数的严重缺陷。在本文中,我们提出了一种经过改进的对角判别规则,并使用偏倚校正的判别分数对高维分类。我们表明,在二次损失函数下,所提出的判别分数主导标准分数。还提供了有关偏倚校正后的规则为何可以潜在地提高预测准确性的分析结果。最后,我们通过大量的模拟研究和实际案例研究,证明了所提出规则相对于原始规则的改进。

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