Incorporating machine learning into factor mixture modeling: Identification of covariate interactions to explain population heterogeneity

IF 2 3区 心理学 Q2 PSYCHOLOGY, MATHEMATICAL
Yan Wang, Tonghui Xu, Jiabin Shen
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引用次数: 0

Abstract

Factor mixture modeling (FMM) has been widely adopted in health and behavioral sciences to examine unobserved population heterogeneity. Covariates are often included in FMM as predictors of the latent class membership via multinomial logistic regression to help understand the formation and characterization of population heterogeneity. However, interaction effects among covariates have received considerably less attention, which might be attributable to the fact that interaction effects cannot be identified in a straightforward fashion. This study demonstrated the utility of structural equation model or SEM trees as an exploratory method to automatically search for covariate interactions that might explain heterogeneity in FMM. That is, following FMM analyses, SEM trees are conducted to identify covariate interactions. Next, latent class membership is regressed on the covariate interactions as well as all main effects of covariates. This approach was demonstrated using the Traumatic Brain Injury Model System National Database.

将机器学习纳入因子混合建模:识别协变量相互作用以解释种群异质性
因子混合模型(FMM)已广泛应用于健康和行为科学,以检查未观察到的人口异质性。协变量通常包含在FMM中,通过多项逻辑回归作为潜在类隶属度的预测因子,以帮助理解群体异质性的形成和表征。然而,协变量之间的相互作用效应受到的关注相当少,这可能是由于相互作用效应不能以直接的方式确定。本研究证明了结构方程模型或SEM树作为一种探索性方法的效用,可以自动搜索可能解释FMM异质性的协变量相互作用。也就是说,在FMM分析之后,进行SEM树来识别协变量相互作用。接下来,对协变量相互作用以及协变量的所有主要影响进行了潜在类隶属度的回归。使用创伤性脑损伤模型系统国家数据库证明了这种方法。
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来源期刊
CiteScore
2.70
自引率
6.50%
发文量
16
审稿时长
36 weeks
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