Publication Date
In 2025 | 0 |
Since 2024 | 0 |
Since 2021 (last 5 years) | 3 |
Since 2016 (last 10 years) | 4 |
Since 2006 (last 20 years) | 6 |
Descriptor
Hierarchical Linear Modeling | 6 |
Longitudinal Studies | 6 |
Monte Carlo Methods | 6 |
Markov Processes | 4 |
Children | 3 |
Educational Research | 3 |
Surveys | 3 |
Bayesian Statistics | 2 |
Data Collection | 2 |
Item Response Theory | 2 |
Maximum Likelihood Statistics | 2 |
More ▼ |
Author
Konstantopoulos, Spyros | 2 |
Shen, Ting | 2 |
Beretvas, S. Natasha | 1 |
Jeon, Minjeong | 1 |
Kwok, Oi-Man | 1 |
Natasha Beretvas, S. | 1 |
Park, Sunyoung | 1 |
Smith, Lindsey J. Wolff | 1 |
Willson, Victor L. | 1 |
Wu, Jiun-Yu | 1 |
Publication Type
Journal Articles | 5 |
Reports - Research | 5 |
Dissertations/Theses -… | 1 |
Education Level
Elementary Education | 3 |
Early Childhood Education | 2 |
Primary Education | 2 |
Grade 3 | 1 |
Kindergarten | 1 |
Audience
Location
South Korea | 1 |
Laws, Policies, & Programs
Assessments and Surveys
Early Childhood Longitudinal… | 4 |
What Works Clearinghouse Rating
Shen, Ting; Konstantopoulos, Spyros – Practical Assessment, Research & Evaluation, 2022
Large-scale assessment survey (LSAS) data are collected via complex sampling designs with special features (e.g., clustering and unequal probability of selection). Multilevel models have been utilized to account for clustering effects whereas the probability weighting approach (PWA) has been used to deal with design informativeness derived from…
Descriptors: Sampling, Weighted Scores, Hierarchical Linear Modeling, Educational Research
Shen, Ting; Konstantopoulos, Spyros – Journal of Experimental Education, 2022
Large-scale education data are collected via complex sampling designs that incorporate clustering and unequal probability of selection. Multilevel models are often utilized to account for clustering effects. The probability weighted approach (PWA) has been frequently used to deal with the unequal probability of selection. In this study, we examine…
Descriptors: Data Collection, Educational Research, Hierarchical Linear Modeling, Bayesian Statistics
Park, Sunyoung; Natasha Beretvas, S. – Journal of Experimental Education, 2021
When selecting a multilevel model to fit to a dataset, it is important to choose both a model that best matches characteristics of the data's structure, but also to include the appropriate fixed and random effects parameters. For example, when researchers analyze clustered data (e.g., students nested within schools), the multilevel model can be…
Descriptors: Hierarchical Linear Modeling, Statistical Significance, Multivariate Analysis, Monte Carlo Methods
Smith, Lindsey J. Wolff; Beretvas, S. Natasha – Journal of Experimental Education, 2017
Conventional multilevel modeling works well with purely hierarchical data; however, pure hierarchies rarely exist in real datasets. Applied researchers employ ad hoc procedures to create purely hierarchical data. For example, applied educational researchers either delete mobile participants' data from the analysis or identify the student only with…
Descriptors: Student Mobility, Academic Achievement, Simulation, Influences
Wu, Jiun-Yu; Kwok, Oi-Man; Willson, Victor L. – Journal of Experimental Education, 2014
The authors compared the effects of using the true Multilevel Latent Growth Curve Model (MLGCM) with single-level regular and design-based Latent Growth Curve Models (LGCM) with or without the higher-level predictor on various criterion variables for multilevel longitudinal data. They found that random effect estimates were biased when the…
Descriptors: Longitudinal Studies, Hierarchical Linear Modeling, Prediction, Regression (Statistics)
Jeon, Minjeong – ProQuest LLC, 2012
Maximum likelihood (ML) estimation of generalized linear mixed models (GLMMs) is technically challenging because of the intractable likelihoods that involve high dimensional integrations over random effects. The problem is magnified when the random effects have a crossed design and thus the data cannot be reduced to small independent clusters. A…
Descriptors: Hierarchical Linear Modeling, Computation, Measurement, Maximum Likelihood Statistics