A note on the prediction error of principal component regression in high dimensions

IF 0.4 Q4 STATISTICS & PROBABILITY
Laura Hucker, Martin Wahl
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引用次数: 1

Abstract

We analyze the prediction error of principal component regression (PCR) and prove high probability bounds for the corresponding squared risk conditional on the design. Our first main result shows that PCR performs comparably to the oracle method obtained by replacing empirical principal components by their population counterparts, provided that an effective rank condition holds. On the other hand, if the latter condition is violated, then empirical eigenvalues start to have a significant upward bias, resulting in a self-induced regularization of PCR. Our approach relies on the behavior of empirical eigenvalues, empirical eigenvectors and the excess risk of principal component analysis in high-dimensional regimes.
关于高维主成分回归预测误差的注记
我们分析了主成分回归(PCR)的预测误差,并证明了在设计条件下相应风险平方的高概率界。我们的第一个主要结果表明,只要有效的秩条件成立,PCR的性能与用种群对应的主成分代替经验主成分得到的oracle方法相当。另一方面,如果违反后一个条件,则经验特征值开始具有显著的向上偏差,导致PCR的自诱导正则化。我们的方法依赖于经验特征值、经验特征向量的行为和高维状态下主成分分析的超额风险。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
22
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