对数据拟合因子分析的一些贡献与协方差拟合因子分析的经验比较

K. Adachi
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引用次数: 16

摘要

最近提出了一种数据拟合因子分析方法,它与目前流行的协方差拟合因子分析方法有很大的不同。在前一种方法中,将公共和唯一因子得分建模为固定的未知参数,并最小化非比例不变的非加权最小二乘(ULS)函数以将模型拟合到数据矩阵中。本文的主要目的是解决数据拟合FA的四个遗留问题。首先,我们提出了一个尺度不变的加权最小二乘(WLS)过程,并根据权重的选择将上述加权最小二乘过程作为一个特例。其次,我们证明了WLS损失函数可以最小化,即使原始数据是未知的,并且只有它们的样本协方差矩阵可用,尽管这是一种数据拟合方法。第三,我们提出了一个不能唯一确定的因子得分估计器。第四,在参数矩阵的恢复方面,我们将这种数据拟合FA过程与协方差拟合FA进行了经验比较。
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SOME CONTRIBUTIONS TO DATA-FITTING FACTOR ANALYSIS WITH EMPIRICAL COMPARISONS TO COVARIANCE-FITTING FACTOR ANALYSIS
A data-fitting factor analysis (FA) procedure was recently presented, which is very different from the prevailing covariance-fitting FA. In the former procedure, common and unique factor scores are modeled as fixed unknown parameters, and an unweighted least squares (ULS) function, which is not scale invariant, is minimized for fitting the model to a data matrix. The main purpose of this paper is to settle four remaining problems with data-fitting FA. First, we present a weighted least squares (WLS) procedure which can be scale invariant, and include the above ULS procedure as a special case according to the choice of weights. Second, we prove that the WLS loss function can be minimized, even if raw data are unknown and only their sample covariance matrix is available, despite being a data-fitting approach. Third, we propose an estimator of factor scores that cannot be uniquely determined. Fourth, we empirically compare this data-fitting FA procedure with covariance-fitting FA with respect to recovery of parameter matrices.
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