Abstract
On the Performance of Multiple Imputation for Multivariate Data with Small Sample Size - John W Graham and Joseph L Schafer Maximizing Power in Randomized Designs When N is Small - Anre Venter and Scott E Maxwell Effect Sizes and Significance Levels in Small-Sample Research - Sharon H Kramer and Robert Rosenthal Statistical Analysis Using Bootstrapping - Yiu-Fai Yung and Wai Chan Concepts and Implementation Meta-Analysis of Single-Case Designs - Scott L Hershberger et al Exact Permutational Inference for Categorical and Nonparametric Data - Cyrus R Mehta and Nitin R Patel Tests of an Identity Correlation Structure - Rachel T Fouladi and James H Steiger Sample Size, Reliability and Tests of Statistical Mediation - Rick H Hoyle and David A Kenny Pooling Lagged Covariance Structures Based on Short, Multivariate Time Series for Dynamic Factor Analysis - John R Nesselroade and Peter C M Molenaar Confirmatory Factor Analysis - Herbert W Marsh and Kit-Tai Hau Strategies for Small Sample Sizes Small Samples in Structural Equation State Space Modeling - Johan H L Oud, Robert A R G Jansen and Dominique M A Haughton Structural Equation Modeling Analysis with Small Samples Using Partial Least Squares - Wynne W Chin and Peter R Newsted
Keywords
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Publication Info
- Year
- 1999
- Type
- book
- Citations
- 1873
- Access
- Closed