NotesFAQContact Us
Collection
Advanced
Search Tips
Showing all 4 results Save | Export
Peer reviewed Peer reviewed
Direct linkDirect link
Sullivan, Sarah; Gnesdilow, Dana; Puntambekar, Sadhana; Kim, Jee-Seon – International Journal of Science Education, 2017
Physical and virtual experimentation are thought to have different affordances for supporting students' learning. Research investigating the use of physical and virtual experiments to support students' learning has identified a variety of, sometimes conflicting, outcomes. Unanswered questions remain about how physical and virtual experiments may…
Descriptors: Middle School Students, Mechanics (Physics), Science Instruction, Scientific Concepts
Peer reviewed Peer reviewed
PDF on ERIC Download full text
Kim, Jee-Seon; Steiner, Peter M.; Hall, Courtney; Thoemmes, Felix – Society for Research on Educational Effectiveness, 2013
When randomized experiments cannot be conducted in practice, propensity score (PS) techniques for matching treated and control units are frequently used for estimating causal treatment effects from observational data. Despite the popularity of PS techniques, they are not yet well studied for matching multilevel data where selection into treatment…
Descriptors: Probability, Research Methodology, Control Groups, Experimental Groups
Peer reviewed Peer reviewed
PDF on ERIC Download full text
Keller, Bryan S. B.; Kim, Jee-Seon; Steiner, Peter M. – Society for Research on Educational Effectiveness, 2013
Propensity score analysis (PSA) is a methodological technique which may correct for selection bias in a quasi-experiment by modeling the selection process using observed covariates. Because logistic regression is well understood by researchers in a variety of fields and easy to implement in a number of popular software packages, it has…
Descriptors: Probability, Scores, Statistical Analysis, Statistical Bias
Peer reviewed Peer reviewed
Direct linkDirect link
Kim, Jee-Seon; Frees, Edward W. – Psychometrika, 2006
Statistical methodology for handling omitted variables is presented in a multilevel modeling framework. In many nonexperimental studies, the analyst may not have access to all requisite variables, and this omission may lead to biased estimates of model parameters. By exploiting the hierarchical nature of multilevel data, a battery of statistical…
Descriptors: Simulation, Social Sciences, Structural Equation Models, Computation