A generalized least squares regression approach for computing effect sizes in single-case research: application examples |
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Authors: | Maggin Daniel M Swaminathan Hariharan Rogers Helen J O'Keeffe Breda V Sugai George Horner Robert H |
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Affiliation: | a University of Connecticut, USAb University of Oregon, USA |
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Abstract: | ![]() A new method for deriving effect sizes from single-case designs is proposed. The strategy is applicable to small-sample time-series data with autoregressive errors. The method uses Generalized Least Squares (GLS) to model the autocorrelation of the data and estimate regression parameters to produce an effect size that represents the magnitude of treatment effect from baseline to treatment phases in standard deviation units. In this paper, the method is applied to two published examples using common single case designs (i.e., withdrawal and multiple-baseline). The results from these studies are described, and the method is compared to ten desirable criteria for single-case effect sizes. Based on the results of this application, we conclude with observations about the use of GLS as a support to visual analysis, provide recommendations for future research, and describe implications for practice. |
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Keywords: | Autocorrelation Effect size Methodology Single-case research |
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