Skip to main navigation
Skip to search
Skip to main content
Arizona State University Home
Home
Profiles
Departments and Centers
Scholarly Works
Activities
Equipment
Grants
Datasets
Prizes
Search by expertise, name or affiliation
Modeling Clustered Data with Very Few Clusters
Daniel McNeish
, Laura M. Stapleton
Research output
:
Contribution to journal
›
Article
›
peer-review
263
Scopus citations
Overview
Fingerprint
Fingerprint
Dive into the research topics of 'Modeling Clustered Data with Very Few Clusters'. Together they form a unique fingerprint.
Sort by
Weight
Alphabetically
Mathematics
Clustered Data
100%
Modeling
51%
Small Sample
45%
Predictors
29%
Performance
28%
Sandwich Estimator
24%
Feature Model
23%
Fixed Effects Model
22%
Simulation Study
22%
Multilevel Models
21%
Randomized Trial
21%
Generalized Estimating Equations
19%
Psychology
18%
Type I Error Rate
18%
Education
17%
Prior distribution
15%
Scenarios
14%
Extremes
14%
Unknown
10%
Model
5%
Class
4%
Arts & Humanities
Modeling
67%
Small Sample
63%
Predictors
33%
Fixed Effects
27%
Educational Psychology
22%
Simulation
21%
Performance
18%
Equations
14%
Scenarios
13%
Inference
13%
Social Sciences
simulation
24%
performance
21%
educational psychology
17%
scenario
11%
trend
7%
literature
6%
Medicine & Life Sciences
Educational Psychology
26%
Applied Psychology
25%
Psychological Power
15%