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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Mixtures of common factor analyzers for high-dimensional data with missing information
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Mixtures of common factor analyzers for high-dimensional data with missing information

机译:缺少信息的高维数据的公共因子分析仪的混合物

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摘要

Mixtures of common factor analyzers (MCFA), thought of as a parsimonious extension of mixture factor analyzers (MFA), have recently been developed as a novel approach to analyzing high-dimensional data, where the number of observations n is not very large relative to their dimension p. The key idea behind MCFA is to reduce further the number of parameters in the specification of the component-covariance matrices. An attractive and important feature of MCFA is to allow visualizing data in lower dimensions. The occurrence of missing data persists in many scientific investigations and often complicates data analysis. In this paper, we establish a computationally flexible EM-type algorithm for parameter estimation of the MCFA model with partially observed data. To facilitate the implementation, two auxiliary permutation matrices are incorporated into the estimating procedure for exactly extracting the location of observed and missing components of each observation. Practical issues related to the specification of initial values, model-based clustering and discriminant procedure are also discussed. Our methodology is illustrated through real and simulated examples.
机译:最近,已开发出被认为是混合因子分析仪(MFA)的简化扩展的公共因子分析仪(MCFA)的混合物,这是一种用于分析高维数据的新颖方法,其中观测数n相对于它们的尺寸p。 MCFA背后的关键思想是进一步减少分量协方差矩阵规范中的参数数量。 MCFA的一项吸引人且重要的功能是允许可视化较小尺寸的数据。丢失数据的发生在许多科学研究中仍然存在,并且常常使数据分析复杂化。在本文中,我们建立了一种计算灵活的EM型算法,用于使用部分观测数据对MCFA模型进行参数估计。为了便于实施,将两个辅助置换矩阵合并到估计过程中,以准确地提取每个观测值的观测分量和缺失分量的位置。还讨论了与初始值的规范,基于模型的聚类和判别过程有关的实际问题。通过实际和模拟的示例来说明我们的方法。

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