E-Book Overview
Random sampling and random assignment are considered by many researchers to be the definitive methodological procedures for maximizing external and internal validity. However, there is a daunting list of legal, ethical, and practical barriers to implementing random sampling and random assignment. While there are no easy ways to overcome these barriers, social workers should seek and utilize strategies that minimize sampling and assignment bias. These methodological and statistical strategies form the book's core. In step-by-step chapters liberally illustrated with examples using a variety of software packages, Dattalo guides readers in selecting and implementing an appropriate strategy. Readers will gain confidence in using such techniques as exemplar sampling, sequential sampling, randomization tests, multiple imputation, mean-score logistic regression, partial randomization, constructed comparison groups, instrumental variables methods, and propensity scores. Each approach will be cataloged in such a way as to highlight its underlying assumptions, implementation strategies, and strengths and weaknesses. Screen shots, annotated resources, and a companion website make this a valuable tool for students, teachers, and researchers seeking a single source that provides a diverse set of tools that will maximize a study's validity when random sampling and random assignment are neither possible nor practical.
E-Book Content
Strategies to Approximate Random Sampling and Assignment
P O C K E T
G U I D E S
T O
SOCIAL WORK RESEARCH METHODS Series Editor Tony Tripodi, DSW Professor Emeritus, Ohio State University
Determining Sample Size: Balancing Power, Precision, and Practicality Patrick Dattalo Preparing Research Articles Bruce A. Thyer Systematic Reviews and Meta-Analysis Julia H. Littell, Jacqueline Corcoran, and Vijayan Pillai Historical Research Elizabeth Ann Danto Confirmatory Factor Analysis Donna Harrington Randomized Controlled Trials: Design and Implementation for Community-Based Psychosocial Interventions Phyllis Solomon, Mary M. Cavanaugh, and Jeff rey Draine Needs Assessment David Royse, Michele Staton-Tindall, Karen Badger, and J. Matthew Webster
Multiple Regression with Discrete Dependent Variables John G. Orme and Terri Combs-Orme Developing Cross-Cultural Measurement Thanh V. Tran Intervention Research: Developing Social Programs Mark W. Fraser, Jack M. Richman, Maeda J. Galinsky, and Steven H. Day Developing and Validating Rapid Assessment Instruments Neil Abell, David W. Springer, and Akihito Kamata Clinical Data-Mining: Integrating Practice and Research Irwin Epstein Strategies to Approximate Random Sampling and Assignment Patrick Dattalo
PATRICK DATTALO
Strategies to Approximate Random Sampling and Assignment
1 2010
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