有序分类变量中的因子保留:基于特征值的测试中多变量相关性的好处和代价。

IF 5.4 3区 材料科学 Q2 CHEMISTRY, PHYSICAL ACS Applied Energy Materials Pub Date : 2024-10-01 Epub Date: 2024-05-06 DOI:10.3758/s13428-024-02417-0
Nils Brandenburg
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引用次数: 0

摘要

探索性因子分析的一个重要步骤是确定因子的最佳数量。下一个特征值充分性检验(NEST;Achim,2017 年)是最近提出的一项建议,它基于对样本相关矩阵特征值所显示的候选因子统计贡献的显著性检验来确定因子数量。以往的模拟研究表明,NEST 能在模拟数据集中高精度地恢复最佳因子数。不过,这些研究主要针对连续变量。本研究将探讨 NEST 在序数数据中的表现。人们一直在争论,究竟是应该根据皮尔逊相关矩阵(已知会低估序数数据集的相关性)来计算序数变量的因子模型,进而计算因子的最佳数量,还是应该根据多变量相关矩阵(已知会不稳定)来计算序数变量的因子模型,进而计算因子的最佳数量。研究的核心问题是,与皮尔逊相关性和多元相关性相关的问题会在多大程度上恶化 NEST 对序数数据集的影响。本文提出了通过利用多变量相关性为序数数据集量身定制的 NEST 实现方法。在模拟中,将所提出的实现方法与 NEST 的原始实现方法进行了比较,后者甚至对序数数据集也能计算皮尔逊相关性。模拟结果表明,在二进制变量和大样本量(N = 500)情况下,用多变量相关性代替皮尔逊相关性提高了 NEST 的准确性。然而,模拟结果也表明,在项目难度相同的情况下,使用皮尔逊相关性的原始实施方案对于具有四个响应类别的李克特变量来说是最准确的实施方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Factor retention in ordered categorical variables: Benefits and costs of polychoric correlations in eigenvalue-based testing.

An essential step in exploratory factor analysis is to determine the optimal number of factors. The Next Eigenvalue Sufficiency Test (NEST; Achim, 2017) is a recent proposal to determine the number of factors based on significance tests of the statistical contributions of candidate factors indicated by eigenvalues of sample correlation matrices. Previous simulation studies have shown NEST to recover the optimal number of factors in simulated datasets with high accuracy. However, these studies have focused on continuous variables. The present work addresses the performance of NEST for ordinal data. It has been debated whether factor models - and thus also the optimal number of factors - for ordinal variables should be computed for Pearson correlation matrices, which are known to underestimate correlations for ordinal datasets, or for polychoric correlation matrices, which are known to be instable. The central research question is to what extent the problems associated with Pearson correlations and polychoric correlations deteriorate NEST for ordinal datasets. Implementations of NEST tailored to ordinal datasets by utilizing polychoric correlations are proposed. In a simulation, the proposed implementations were compared to the original implementation of NEST which computes Pearson correlations even for ordinal datasets. The simulation shows that substituting polychoric correlations for Pearson correlations improves the accuracy of NEST for binary variables and large sample sizes (N = 500). However, the simulation also shows that the original implementation using Pearson correlations was the most accurate implementation for Likert-type variables with four response categories when item difficulties were homogeneous.

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来源期刊
ACS Applied Energy Materials
ACS Applied Energy Materials Materials Science-Materials Chemistry
CiteScore
10.30
自引率
6.20%
发文量
1368
期刊介绍: ACS Applied Energy Materials is an interdisciplinary journal publishing original research covering all aspects of materials, engineering, chemistry, physics and biology relevant to energy conversion and storage. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important energy applications.
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