Using segmented linear regression models with unknown change points to analyze strategy shifts in cognitive tasks

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Abstract

Some years ago, Beem (1993, 1995) described a program for fitting two regression lines with an unknown change point (Segcurve). He suggested that such models are useful for the analysis of a variety of phenomena and gave an example of an application to the study of strategy shifts in a mental rotation task. This technique has also proven to be very fruitful for investigating strategy use and strategy shifts in other cognitive tasks. Recently, Beem (1999) developed SegcurvN, which fits n regression lines with (n-1) unknown change points. In the present article we present this new technique and demonstrate the usefulness of a three-phase segmented linear regression model for the identification of strategies and strategy shifts in cognitive tasks by applying it to data from a numerosity judgment experiment. The advantages and shortcomings of this technique are evaluated.

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Luwel, K., Beem, A. L., Onghena, P., & Verschaffel, L. (2001). Using segmented linear regression models with unknown change points to analyze strategy shifts in cognitive tasks. Behavior Research Methods, Instruments, and Computers, 33(4), 470–478. https://doi.org/10.3758/BF03195404

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