二元估计问题的方向配对主成分分析。

Yifei Fan, Navdeep Dahiya, Samuel Bignardi, Romeil Sandhu, Anthony Yezzi
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引用次数: 0

摘要

我们提出了方向配对主成分分析(DP-PCA),这是一种新的线性降维模型,用于估计耦合但部分可观察的变量集。与偏最小二乘方法(例如,偏最小二乘回归和典型相关分析)最大化两个数据集之间的相关性/协方差不同,我们的DP-PCA分别直接最小化可观测部分和不可观测部分的重建和预测误差,条件或无条件地最小化。我们证明了所提出的DP-PCA方法的最优性,并通过在合成高斯数据、多目标回归数据集和单通道图像数据集上的数据重建和预测实验,比较和评估了相关的线性交叉分解方法。结果表明,当只允许一对碱基时,条件DP-PCA在可观测部分和总体变量集上的重构误差最小;同时,无条件DP-PCA在不可观测部分的预测误差最小。当可观测部分的PCA基础允许额外预算时,可以使用可观测部分的标准PCA和不可观测部分的无条件DP-PCA相结合的方法来获得最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Directionally Paired Principal Component Analysis for Bivariate Estimation Problems.

We propose Directionally Paired Principal Component Analysis (DP-PCA), a novel linear dimension-reduction model for estimating coupled yet partially observable variable sets. Unlike partial least squares methods (e.g., partial least squares regression and canonical correlation analysis) that maximize correlation/covariance between the two datasets, our DP-PCA directly minimizes, either conditionally or unconditionally, the reconstruction and prediction errors for the observable and unobservable part, respectively. We demonstrate the optimality of the proposed DP-PCA approach, we compare and evaluate relevant linear cross-decomposition methods with data reconstruction and prediction experiments on synthetic Gaussian data, multi-target regression datasets, and a single-channel image dataset. Results show that when only a single pair of bases is allowed, the conditional DP-PCA achieves the lowest reconstruction error on the observable part and the total variable sets as a whole; meanwhile, the unconditional DP-PCA reaches the lowest prediction errors on the unobservable part. When an extra budget is allowed for the observable part's PCA basis, one can reach an optimal solution using a combined method: standard PCA for the observable part and unconditional DP-PCA for the unobservable part.

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