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Paper Title

Improved LM Test for Robust Model Specification Searches in Covariance Structure Analysis

Authors

Peter M. Bentler
Peter M. Bentler
Bang Quan Zheng
Bang Quan Zheng

Keywords

  • LM Test
  • Covariance Structure Analysis (CSA)
  • Structural Equation Modeling (SEM)
  • Model Specification
  • Bootstrap Method
  • Lagrange Multipliers
  • Wald Tests
  • Monte Carlo Simulations
  • Statistical Fit
  • Small Samples
  • High Degrees of Freedom
  • Model Fit Optimization
  • Measurement Error
  • Latent Variables
  • Model Specification Search

Article Type

Research Article

Journal

ArXiv.org

Research Impact Tools

Published On

November, 2024

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Abstract

Covariance Structure Analysis (CSA) or Structural Equation Modeling (SEM) is critical for political scientists measuring latent structural relationships, allowing for the simultaneous assessment of both latent and observed variables, alongside measurement error. Well-specified models are essential for theoretical support, balancing simplicity with optimal model fit. However, current approaches to improving model specification searches remain limited, making it challenging to capture all meaningful parameters and leaving models vulnerable to chance-based specification risks. To address this, we propose an improved Lagrange Multipliers (LM) test incorporating stepwise bootstrapping in LM and Wald tests to detect omitted parameters. Monte Carlo simulations and empirical applications underscore its effectiveness, particularly in small samples and models with high degrees of freedom, thereby enhancing statistical fit.

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