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Schaper, Andrew; McIntosh, Kent; Hoselton, Robert – School Psychology Quarterly, 2016
The purpose of this study was to document within-year fidelity growth during installation and initial implementation of School-Wide Positive Behavioral Interventions and Supports (SWPBIS). Participants included school teams from schools throughout the United States that were in years 1 to 4 of SWPBIS implementation and routinely evaluated their…
Descriptors: Positive Behavior Supports, Program Implementation, Fidelity, Program Evaluation
Wood, Laura; Kiperman, Sarah; Esch, Rachel C.; Leroux, Audrey J.; Truscott, Stephen D. – School Psychology Quarterly, 2017
High school dropout has been associated with negative outcomes, including increased rates of unemployment, incarceration, and mortality. Dropout rates vary significantly depending on individual and environmental factors. The purpose of our study was to use an ecological perspective to concurrently explore student- and school-level predictors…
Descriptors: High School Students, Predictor Variables, Dropouts, Potential Dropouts
Escobar, Milagros; Alarcón, Rafael; Blanca, María J.; Fernández-Baena, F. Javier; Rosel, Jesús F.; Trianes, María Victoria – School Psychology Quarterly, 2013
This study uses hierarchical or multilevel modeling to identify variables that contribute to daily stressors in a population of schoolchildren. Four hierarchical levels with several predictive variables were considered: student (age, sex, social adaptation of the student, number of life events and chronic stressors experienced, and educational…
Descriptors: Stress Variables, Hierarchical Linear Modeling, Elementary School Students, Predictor Variables

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