Factor Analysis is a popular method for modeling dependence in multivariate data. However, determining the number of factors and obtaining a sparse orientation of the loadings are still major challenges. In this paper, we propose a decision-theoretic approach that brings to light the relation between a sparse representation of the loadings and factor dimension. This relation is done through a summary from information contained in the multivariate posterior. To construct such summary, we introduce a three-step approach. In the first step, the model is fitted with a conservative factor dimension. In the second step, a series of sparse point-estimates, with a decreasing number of factors, is obtained by minimizing an expected predictive loss function. In step three, the degradation in utility in relation to the sparse loadings and factor dimensions is displayed in the posterior summary. The findings are illustrated with applications in classical data from the Factor Analysis literature. We used different prior choices and factor dimensions to demonstrate the flexibility of the proposed method.
翻译:系数分析是在多变量数据中模型依赖性的一种流行方法。然而,确定因素数量和对载荷的偏少方向仍然是主要的挑战。在本文件中,我们提议采用决定理论方法,以揭示载荷和因子维度极少的表述之间的关系。这种关系是通过多变量后继体所含信息的摘要进行的。为构建这种摘要,我们采用了三步方法。在第一步,该模型配有保守因素层面。在第二步,通过尽量减少预期损失函数,获得一系列稀少的点数估计,同时减少因素的数量。在第三步,与稀少的载荷和因子维度有关的实用性退化情况在后端摘要中显示。研究结果用要素分析文献的古典数据中的应用来说明。我们使用了不同的先前选择和因子维度来证明拟议方法的灵活性。