Regression-based techniques for statistical decision making in singlecase designs
PDF (Español (España))

How to Cite

Manolov, R., Arnau, J., Solanas, A., & Bono, R. (2010). Regression-based techniques for statistical decision making in singlecase designs. Psicothema, 22(Número 4), 1026–1032. Retrieved from https://reunido.uniovi.es/index.php/PST/article/view/8987

Abstract

The present study evaluates the performance of four methods for estimating regression coefficients used to make statistical decisions about intervention effectiveness in single-case designs. Ordinary least square estimation is compared to two correction techniques dealing with general trend and a procedure that eliminates autocorrelation whenever it is present. Type I error rates and statistical power are studied for experimental conditions defined by the presence or absence of treatment effect (change in level or in slope), general trend, and serial dependence. The results show that empirical Type I error rates do not approach the nominal ones in the presence of autocorrelation or general trend when ordinary and generalized least squares are applied. The techniques controlling trend show lower false alarm rates, but prove to be insufficiently sensitive to existing treatment effects. Consequently, the use of the statistical significance of the regression coefficients for detecting treatment effects is not recommended for short data series.
PDF (Español (España))