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PROJECTED PRINCIPAL COMPONENT ANALYSIS IN FACTOR MODELS

机译:因子模型中的投影主成分分析

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摘要

This paper introduces a Projected Principal Component Analysis (Projected-PCA), which employees principal component analysis to the projected (smoothed) data matrix onto a given linear space spanned by covariates. When it applies to high-dimensional factor analysis, the projection removes noise components. We show that the unobserved latent factors can be more accurately estimated than the conventional PCA if the projection is genuine, or more precisely, when the factor loading matrices are related to the projected linear space. When the dimensionality is large, the factors can be estimated accurately even when the sample size is finite. We propose a flexible semi-parametric factor model, which decomposes the factor loading matrix into the component that can be explained by subject-specific covariates and the orthogonal residual component. The covariates’ effects on the factor loadings are further modeled by the additive model via sieve approximations. By using the newly proposed Projected-PCA, the rates of convergence of the smooth factor loading matrices are obtained, which are much faster than those of the conventional factor analysis. The convergence is achieved even when the sample size is finite and is particularly appealing in the high-dimension-low-sample-size situation. This leads us to developing nonparametric tests on whether observed covariates have explaining powers on the loadings and whether they fully explain the loadings. The proposed method is illustrated by both simulated data and the returns of the components of the S&P 500 index.
机译:本文介绍了一种投影主成分分析(Projected-PCA),即雇员主成分分析,将投影(平滑的)数据矩阵投影到一个由协变量覆盖的给定线性空间上。当将其应用于高维因子分析时,该投影将消除噪声成分。我们显示,如果投影是真实的,则比常规PCA可以更准确地估计未观察到的潜在因子,或者当因子加载矩阵与投影的线性空间相关时,可以更准确地估计未观测到的潜在因子。当维数较大时,即使样本大小有限,也可以准确估算因子。我们提出了一种灵活的半参数因子模型,该模型将因子加载矩阵分解为可由特定主题的协变量和正交残差分量解释的分量。附加变量模型通过筛网近似对协变量对因子负荷的影响进行建模。通过使用新提出的Projected-PCA,可以获得平滑因子加载矩阵的收敛速度,该速度比常规因子分析的收敛速度快得多。即使样本量有限,也可以实现收敛,并且在高维,低样本量的情况下特别有吸引力。这导致我们针对观察到的协变量是否具有解释载荷的能力以及它们是否能充分解释载荷的能力开展非参数检验。模拟数据和标准普尔500指数成份股的收益率都说明了该方法。

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  • 期刊名称 other
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  • 年(卷),期 -1(44),1
  • 年度 -1
  • 页码 219–254
  • 总页数 42
  • 原文格式 PDF
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