tjmahr / EdPsych964

Education Psychology 964: Hierarchical Linear Modeling (Spring 2014)

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Hierarchical Linear Modeling (2014)

List of topics

  • Introduction and overview of HLM applications (S&B, Chs 1, 2)
  • Review of simple and multiple regression, fixed and random effects ANOVA
  • Statistical treatment of clustered data (S&B, Ch 3)
  • Random intercept models (S&B, Ch 4)
  • Random slope models (S&B, Ch 5)
  • Hypothesis testing and model specification (S&B, Ch 6)
  • Explained variance (S&B, Ch 7)
  • Heteroscedasticity (S&B, Ch 8)
  • Missing data (S&B, Ch 9)
  • Evaluation of model assumptions (S&B, Ch 10)
  • Designing multilevel studies; power analysis (S&B, Ch 11)
  • Alternative estimation methods (S&B, Ch 12)
  • Crossed random effects and multiple memberships (S&B, Ch 13)
  • Survey weights (S&B, Ch 14)
  • Longitudinal data analysis (S&B, Ch 15)
  • Multivariate multilevel models (S&B, Ch 16)
  • Discrete dependent variables (S&B, Ch 17)
  • Latent growth curve models, meta analysis

Course References

Snijders, T.A.B., & Bosker, R.J. (2011). Multilevel analysis: An introduction to basic and advanced multilevel modeling. (2nd ed.) Sage. [S&B]

About

Education Psychology 964: Hierarchical Linear Modeling (Spring 2014)

License:GNU General Public License v2.0


Languages

Language:R 100.0%