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Supervised Principal Component Analysis Via Manifold Optimization

机译:通过流形优化进行监督的主成分分析

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High dimensional prediction problems are pervasive in the scientific community. In practice, dimensionality reduction (DR) is often performed as an initial step to improve prediction accuracy and interpretability. Principal component analysis (PCA) has been utilized extensively for DR, but does not take advantage of outcome variables inherent in the prediction task. Existing approaches for supervised PCA (SPCA) either take a multi-stage approach or incorporate supervision indirectly. We present a manifold optimization approach to SPCA that simultaneously solves the prediction and dimensionality reduction problems. The proposed framework is general enough for both regression and classification settings. Our empirical results show that the proposed approach explains nearly as much variation as PCA while outperforming existing methods in prediction accuracy.
机译:高维预测问题普遍存在于科学界。在实践中,降维(DR)通常作为提高预测准确性和可解释性的初始步骤执行。主成分分析(PCA)已广泛用于DR,但没有利用预测任务中固有的结果变量。监督PCA(SPCA)的现有方法要么采取多阶段方法,要么间接合并监督。我们提出了一种针对SPCA的流形优化方法,该方法同时解决了预测和降维问题。所提出的框架对于回归和分类设置都足够通用。我们的经验结果表明,该方法可以解释与PCA几乎相同的差异,同时在预测准确度方面优于现有方法。

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