A Spectral Method for Identifiable Grade of Membership Analysis with Binary Responses.

IF 2.9 2区 心理学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Psychometrika Pub Date : 2024-06-01 Epub Date: 2024-02-15 DOI:10.1007/s11336-024-09951-y
Ling Chen, Yuqi Gu
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Abstract

Grade of membership (GoM) models are popular individual-level mixture models for multivariate categorical data. GoM allows each subject to have mixed memberships in multiple extreme latent profiles. Therefore, GoM models have a richer modeling capacity than latent class models that restrict each subject to belong to a single profile. The flexibility of GoM comes at the cost of more challenging identifiability and estimation problems. In this work, we propose a singular value decomposition (SVD)-based spectral approach to GoM analysis with multivariate binary responses. Our approach hinges on the observation that the expectation of the data matrix has a low-rank decomposition under a GoM model. For identifiability, we develop sufficient and almost necessary conditions for a notion of expectation identifiability. For estimation, we extract only a few leading singular vectors of the observed data matrix and exploit the simplex geometry of these vectors to estimate the mixed membership scores and other parameters. We also establish the consistency of our estimator in the double-asymptotic regime where both the number of subjects and the number of items grow to infinity. Our spectral method has a huge computational advantage over Bayesian or likelihood-based methods and is scalable to large-scale and high-dimensional data. Extensive simulation studies demonstrate the superior efficiency and accuracy of our method. We also illustrate our method by applying it to a personality test dataset.

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二元响应的可识别成员等级分析光谱法
成员等级(GoM)模型是针对多变量分类数据的流行的个体级混合模型。GoM 模型允许每个研究对象在多个极端潜特征中拥有混合成员资格。因此,GoM 模型比限制每个受试者只属于单一特征的潜类模型具有更丰富的建模能力。GoM 的灵活性是以更具挑战性的可识别性和估计问题为代价的。在这项工作中,我们提出了一种基于奇异值分解(SVD)的频谱方法,用于多变量二元响应的 GoM 分析。在 GoM 模型下,数据矩阵的期望具有低秩分解,而我们的方法正是基于这一观察结果。在可识别性方面,我们提出了期望可识别性概念的充分条件和几乎必要条件。在估计方面,我们只提取观察到的数据矩阵的几个前导奇异向量,并利用这些向量的单纯形几何来估计混合成员得分和其他参数。我们还确定了我们的估计方法在主体数和项数均增长到无穷大的双重渐近机制中的一致性。与贝叶斯方法或基于似然法的方法相比,我们的光谱方法具有巨大的计算优势,可扩展到大规模和高维数据。广泛的模拟研究证明了我们的方法具有卓越的效率和准确性。我们还将我们的方法应用于一个人格测试数据集,以此来说明我们的方法。
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来源期刊
Psychometrika
Psychometrika 数学-数学跨学科应用
CiteScore
4.40
自引率
10.00%
发文量
72
审稿时长
>12 weeks
期刊介绍: The journal Psychometrika is devoted to the advancement of theory and methodology for behavioral data in psychology, education and the social and behavioral sciences generally. Its coverage is offered in two sections: Theory and Methods (T& M), and Application Reviews and Case Studies (ARCS). T&M articles present original research and reviews on the development of quantitative models, statistical methods, and mathematical techniques for evaluating data from psychology, the social and behavioral sciences and related fields. Application Reviews can be integrative, drawing together disparate methodologies for applications, or comparative and evaluative, discussing advantages and disadvantages of one or more methodologies in applications. Case Studies highlight methodology that deepens understanding of substantive phenomena through more informative data analysis, or more elegant data description.
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