潜在类模型
心理学
同种类的
班级(哲学)
潜变量模型
认知心理学
潜变量
纵向数据
人工智能
计算机科学
机器学习
数学
数据挖掘
组合数学
作者
Marian Hickendorff,Michael Schneider,Jake McMullen,Michael Schneider,Kelly Trezise
标识
DOI:10.1016/j.lindif.2017.11.001
摘要
This article gives an introduction to latent class, latent profile, and latent transition models for researchers interested in investigating individual differences in learning and development. The models allow analyzing how the observed heterogeneity in a group (e.g., individual differences in conceptual knowledge) can be traced back to underlying homogeneous subgroups (e.g., learners differing systematically in their developmental phases). The estimated parameters include a characteristic response pattern for each subgroup, and, in the case of longitudinal data, the probabilities of transitioning from one subgroup to another over time. This article describes the steps involved in using the models, gives practical examples, and discusses limitations and extensions. Overall, the models help to characterize heterogeneous learner populations, multidimensional learning outcomes, non-linear learning pathways, and changing relations between learning processes. The application of these models can therefore make a substantial contribution to our understanding of learning and individual differences.
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