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Disegno ABA Fattoriale×Disegno Sperimentale Fattoriale a Soggetto Singolo×
CampoDisegno sperimentaleDisegno sperimentale
FamigliaProcess / pipelineProcess / pipeline
Anno di origine1968 (ABA base); factorial extensions developed through 1980s–2000s1970s–1980s
IdeatoreDerived from ABA reversal design (Baer, Wolf & Risley, 1968) extended with factorial manipulation principlesApplied behavior analysis tradition; systematized in Barlow & Hersen (1984) and Kazdin (1982)
TipoSingle-case experimental design with factorial treatment structureExperimental single-subject design with multiple independent variables
Fonte seminaleKratochwill, T. R., & Levin, J. R. (Eds.). (2010). Single-Case Intervention Research: Methodological and Statistical Advances. American Psychological Association. ISBN: 978-1433807909Kazdin, A. E. (2011). Single-Case Research Designs: Methods for Clinical and Applied Settings (2nd ed.). Oxford University Press. ISBN: 978-0195341881
AliasFactorial reversal design, Multi-factor ABA design, Factorial withdrawal design, SCED factorial ABAfactorial SCED, factorial single-case design, factorial N-of-1 design, factorial within-subject experimental design
Correlati66
SintesiThe Factorial ABA design embeds a factorial treatment structure within the ABA reversal framework. Rather than testing a single treatment against baseline, the researcher systematically varies two or more independent variables (factors) across treatment phases, using the ABA withdrawal logic to establish experimental control. This makes it possible to examine main effects and interactions among treatment components within a single-case or small-N experimental context.A factorial single-subject experimental design applies the logic of factorial experiments — manipulating two or more independent variables simultaneously to study main effects and interactions — within a single-subject (N=1 or small N) repeated-measures framework. Instead of comparing groups, the same individual serves as their own control across systematically varied conditions, enabling fine-grained analysis of how multiple treatment components combine to influence behavior or clinical outcomes.
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ScholarGateConfronta i metodi: Factorial ABA Design · Factorial Single-Subject Experimental Design. Consultato il 2026-06-19 da https://scholargate.app/it/compare