台大心理系

回首頁 演講訊息 103.06.04 (三) 14:30 黃柏僩博士候選人 〈A Penalized Likelihood Method for Structural Equation Modeling and Its Asymptotic Properties〉
11/27/2014

103.06.04 (三) 14:30 黃柏僩博士候選人 〈A Penalized Likelihood Method for Structural Equation Modeling and Its Asymptotic Properties〉

  • 演講時間: 2014-6-4
  • 演講地點: N100
  • 講者: 黃柏僩博士候選人(臺大心理系)
  • 演講主題: A Penalized Likelihood Method for Structural Equation Modeling and Its Asymptotic Properties
Structural equation modeling (SEM) is a commonly used multivariate statistical method in psychological studies. Under SEM framework, researchers can flexibly specify their models based on available psychological theories. In this dissertation, a penalized likelihood (PL) method for SEM was proposed. Compared to the usual likelihood, PL includes an additional penalty term to control the complexity of the hypothesized model. When the penalty level is chosen appropriately, PL can yield a model that balances model goodness-of-fit and model complexity. The proposed method is especially useful when limited substantive knowledge is available for model specification. An expectation-conditional maximization (ECM) algorithm was developed to maximize the PL estimation criterion with several state-of-art penalty functions. Four theorems on the asymptotic behaviors of PL were derived, including the local/global oracle property of PL estimators and the selection consistency of Akaike/Bayesian information criterion (AIC/BIC). Two simulations were conducted to evaluate the empirical performance of the proposed PL method. The practical utility of PL was demonstrated through two real data examples.
回首頁 演講訊息 103.06.04 (三) 14:30 黃柏僩博士候選人 〈A Penalized Likelihood Method for Structural Equation Modeling and Its Asymptotic Properties〉