Department of Statistical Sciences, Sapienza Università di Roma, P.le Aldo Moro, 5, 00185, Rome, Italy.
Sapienza Università di Roma, Rome, Italy.
Psychometrika. 2020 Sep;85(3):555-574. doi: 10.1007/s11336-020-09715-4. Epub 2020 Aug 16.
Factor analysis is a well-known method for describing the covariance structure among a set of manifest variables through a limited number of unobserved factors. When the observed variables are collected at various occasions on the same statistical units, the data have a three-way structure and standard factor analysis may fail. To overcome these limitations, three-way models, such as the Parafac model, can be adopted. It is often seen as an extension of principal component analysis able to discover unique latent components. The structural version, i.e., as a reparameterization of the covariance matrix, has been also formulated but rarely investigated. In this article, such a formulation is studied by discussing under what conditions factor uniqueness is preserved. It is shown that, under mild conditions, such a property holds even if the specific factors are assumed to be within-variable, or within-occasion, correlated and the model is modified to become scale invariant.
因子分析是一种通过有限数量的未观察因子来描述一组显式变量之间协方差结构的知名方法。当观察变量在同一统计单位的不同场合收集时,数据具有三向结构,标准因子分析可能会失败。为了克服这些限制,可以采用三向模型,如并行分析模型。它通常被视为能够发现独特潜在成分的主成分分析的扩展。结构版本,即协方差矩阵的重新参数化,也已被提出,但很少被研究。本文通过讨论在什么条件下保持因子独特性来研究这种形式。结果表明,在温和的条件下,即使假设特定因子在变量内或场合内相关,并且对模型进行修改以使其成为尺度不变的,这种特性仍然成立。