Latent class models are powerful statistical modeling tools widely used in psychological, behavioral, and social sciences. In the modern era of data science, researchers often have access to response data collected from large-scale surveys or assessments, featuring many items (large J) and many subjects (large N). This is in contrary to the traditional regime with fixed J and large N. To analyze such large-scale data, it is important to develop methods that are both computationally efficient and theoretically valid. In terms of computation, the conventional EM algorithm for latent class models tends to have a slow algorithmic convergence rate for large-scale data and may converge to some local optima instead of the maximum likelihood estimator(MLE). Motivated by this, we introduce the tensor decomposition perspective into latent class analysis with binary responses. Methodologically, we propose to use a moment-based tensor power method in the first step, and then use the obtained estimates as initialization for the EM algorithm in the second step. Theoretically, we establish the clustering consistency of the MLE in assigning subjects into latent classes when N and J both go to infinity. Simulation studies suggest that the proposed tensor-EM pipeline enjoys both good accuracy and computational efficiency for large-scale data with binary responses. We also apply the proposed method to an educational assessment dataset as an illustration.
翻译:在现代数据科学时代,研究人员往往能够获得从大规模调查或评估中收集的反馈数据,其特点是许多项目(大J)和许多主题(大N)。这与固定J和大N的传统制度背道而驰。为了分析这种大规模数据,必须制定既具有计算效率又具有理论有效性的方法。在计算方面,潜级模型的常规EM算法往往对大规模数据具有缓慢的算法趋同率,并可能与某些地方的Opimima相融合,而不是与最大可能性估测器(MLE)相融合。受此动机的驱使,我们将高压分解观点引入潜伏类分析,同时采用二进制反应。在方法上,我们提议在第一步使用基于时间的电压能力方法,然后将获得的估计数作为EM算法在第二步的初始化。理论上,我们将MLE组合起来,在N和J进入某个潜在类,而不是最大可能性估测算器(MLE)时,可能聚集到某个地方的Opimimimimimima。我们还将高压分解观点的观点引入潜在的数据计算方法。我们还把拟议的高压数据方法用于进行模拟的模拟数据计算。我们还把Slam-hal-immalimmalationalalalalation 并用作进行一个模拟数据计算。