Functional structural equation modeling with latent variables
Fatemeh Asgari, Valeria Vitelli, Uta Sailer

TL;DR
This paper introduces a flexible family of Functional Structural Equation Models (FSEMs) that incorporate Gaussian Process-based latent variables, effectively handling sparse and irregular functional data in SEMs.
Contribution
It develops a novel FSEM framework with Gaussian Process latent variables, adaptable to sparse, irregular, and missing data scenarios, with an inferential approach based on restricted maximum likelihood.
Findings
Model performs well in simulation studies
Real data example confirms practical effectiveness
Confidence regions for estimates are successfully constructed
Abstract
Handling latent variables in Structural Equation Models (SEMs) in a case where both the latent variables and their corresponding indicators in the measurement error part of the model are random curves presents significant challenges, especially with sparse data. In this paper, we develop a novel family of Functional Structural Equation Models (FSEMs) that incorporate latent variables modeled as Gaussian Processes (GPs). The introduced FSEMs are built upon functional regression models having response variables modeled as underlying GPs. The model flexibly adapts to cases when the random curves' realizations are observed only over a sparse subset of the domain, and the inferential framework is based on a restricted maximum likelihood approach. The advantage of this framework lies in its ability and flexibility in handling various data scenarios, including regularly and irregularly spaced…
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Taxonomy
TopicsCognitive Science and Mapping · Multi-Criteria Decision Making
