Thanks coefficient alpha, we’ll take it from here. D McNeish Psychological Methods 23 (3), 412-433, 2018 | 2016 | 2018 |
The Effect of Small Sample Size on Two-Level Model Estimates: A Review and Illustration DM McNeish, LM Stapleton Educational Psychology Review, 2016 | 753 | 2016 |
On the unnecessary ubiquity of hierarchical linear modeling. D McNeish, LM Stapleton, RD Silverman Psychological methods 22 (1), 114, 2017 | 721 | 2017 |
On using Bayesian methods to address small sample problems D McNeish Structural Equation Modeling: A Multidisciplinary Journal 23 (5), 750-773, 2016 | 499 | 2016 |
Thinking twice about sum scores D McNeish, MG Wolf Behavior research methods, 1-19, 2020 | 489 | 2020 |
Modeling clustered data with very few clusters D McNeish, LM Stapleton Multivariate behavioral research 51 (4), 495-518, 2016 | 403 | 2016 |
A primer on two-level dynamic structural equation models for intensive longitudinal data in Mplus. D McNeish, EL Hamaker Psychological methods 25 (5), 610, 2020 | 395 | 2020 |
Using Lasso for Predictor Selection and to Assuage Overfitting: A Method Long Overlooked in Behavioral Sciences DM McNeish Multivariate Behavioral Research 50 (5), 474-481, 2015 | 347 | 2015 |
The thorny relation between measurement quality and fit index cutoffs in latent variable models D McNeish, J An, GR Hancock Journal of personality assessment 100 (1), 43-52, 2018 | 346 | 2018 |
Fixed effects models versus mixed effects models for clustered data: Reviewing the approaches, disentangling the differences, and making recommendations. D McNeish, K Kelley Psychological Methods 24 (1), 20, 2019 | 284 | 2019 |
Small sample methods for multilevel modeling: A colloquial elucidation of REML and the Kenward-Roger correction D McNeish Multivariate behavioral research 52 (5), 661-670, 2017 | 259 | 2017 |
Dynamic fit index cutoffs for confirmatory factor analysis models. D McNeish, MG Wolf Psychological Methods 28 (1), 61, 2023 | 240 | 2023 |
Bayesian versus frequentist estimation for structural equation models in small sample contexts: A systematic review SC Smid, D McNeish, M Miočević, R van de Schoot Structural Equation Modeling: A Multidisciplinary Journal 27 (1), 131-161, 2020 | 218 | 2020 |
Peer and teacher supports in relation to motivation and effort: A multi-level study KR Wentzel, K Muenks, D McNeish, S Russell Contemporary Educational Psychology 49, 32-45, 2017 | 195 | 2017 |
Missing data methods for arbitrary missingness with small samples D McNeish Journal of Applied Statistics 44 (1), 24-39, 2017 | 175 | 2017 |
Exploratory factor analysis with small samples and missing data D McNeish Journal of personality assessment 99 (6), 637-652, 2017 | 172 | 2017 |
Differentiating between mixed-effects and latent-curve approaches to growth modeling D McNeish, T Matta Behavior research methods 50, 1398-1414, 2018 | 149 | 2018 |
Small samples in multilevel modeling J Hox, D McNeish Small sample size solutions, 215-225, 2020 | 122 | 2020 |
Modeling sparsely clustered data: Design-based, model-based, and single-level methods. DM McNeish Psychological Methods 19 (4), 552-563, 2014 | 121 | 2014 |
Multilevel and single-level models for measured and latent variables when data are clustered LM Stapleton, DM McNeish, JS Yang Educational Psychologist 51 (3-4), 317-330, 2016 | 111 | 2016 |