Abstract
The Ising model has become a popular psychometric model for analyzing item response data. The statistical inference of the Ising model is typically carried out via a pseudo-likelihood, as the standard likelihood approach suffers from a high computational cost when there are many variables (i.e., items). Unfortunately, the presence of missing values can hinder the use of pseudo-likelihood, and a listwise deletion approach for missing data treatment may introduce a substantial bias into the estimation and sometimes yield misleading interpretations. This paper proposes a conditional Bayesian framework for Ising network analysis with missing data, which integrates a pseudo-likelihood approach with iterative data imputation. An asymptotic theory is established for the method. Furthermore, a computationally efficient Pólya–Gamma data augmentation procedure is proposed to streamline the sampling of model parameters. The method’s performance is shown through simulations and a real-world application to data on major depressive and generalized anxiety disorders from the National Epidemiological Survey on Alcohol and Related Conditions (NESARC).
| Original language | English |
|---|---|
| Pages (from-to) | 1186-1202 |
| Number of pages | 17 |
| Journal | Psychometrika |
| Volume | 89 |
| Issue number | 4 |
| DOIs | |
| State | Published - Dec 2024 |
Keywords
- Ising model
- full conditional specification
- generalized anxiety disorder
- iterative imputation
- major depressive disorder
- mental health disorders
- network psychometrics