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Bibliographic Details
Main Authors: Zhang, Yimang, Wang, Xiaorui, Shi, Jian Qing
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.02846
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author Zhang, Yimang
Wang, Xiaorui
Shi, Jian Qing
author_facet Zhang, Yimang
Wang, Xiaorui
Shi, Jian Qing
contents Factor analysis models are widely utilized in social and behavioral sciences, such as psychology, education, and marketing, to measure unobservable latent traits. In this article, we introduce a nonlinear structured latent factor analysis model which is more flexible to characterize the relationship between manifest variables and latent factors. The confirmatory identifiability of the latent factor is discussed, ensuring the substantive interpretation of the latent factors. A Bayesian approach with a Gaussian process prior is proposed to estimate the unknown nonlinear function and the unknown parameters. Asymptotic results are established, including structural identifiability of the latent factors, consistency of the estimates of the unknown parameters and the unknown nonlinear function. Simulation studies and a real data analysis are conducted to investigate the performance of the proposed method. Simulation studies show our proposed method performs well in handling nonlinear model and successfully identifies the latent factors. Our analysis incorporates oil flow data, allowing us to uncover the underlying structure of latent nonlinear patterns.
format Preprint
id arxiv_https___arxiv_org_abs_2501_02846
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bayesian analysis of nonlinear structured latent factor models using a Gaussian Process Prior
Zhang, Yimang
Wang, Xiaorui
Shi, Jian Qing
Methodology
Factor analysis models are widely utilized in social and behavioral sciences, such as psychology, education, and marketing, to measure unobservable latent traits. In this article, we introduce a nonlinear structured latent factor analysis model which is more flexible to characterize the relationship between manifest variables and latent factors. The confirmatory identifiability of the latent factor is discussed, ensuring the substantive interpretation of the latent factors. A Bayesian approach with a Gaussian process prior is proposed to estimate the unknown nonlinear function and the unknown parameters. Asymptotic results are established, including structural identifiability of the latent factors, consistency of the estimates of the unknown parameters and the unknown nonlinear function. Simulation studies and a real data analysis are conducted to investigate the performance of the proposed method. Simulation studies show our proposed method performs well in handling nonlinear model and successfully identifies the latent factors. Our analysis incorporates oil flow data, allowing us to uncover the underlying structure of latent nonlinear patterns.
title Bayesian analysis of nonlinear structured latent factor models using a Gaussian Process Prior
topic Methodology
url https://arxiv.org/abs/2501.02846