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The influence of trend estimation method on forecasting curriculum-based measurement of reading performance
Institution:1. Lehigh University, United States of America;2. ServeMinnesota, United States of America;1. Counseling, Developmental & Educational Psychology, Boston College, 140 Commonwealth Ave., Chestnut Hill, MA 02467, USA;2. Chapin Hall, University of Chicago, 1313 East 60th St., Chicago, IL 60637, USA;1. Marcus Autism Center, Children''s Healthcare of Atlanta, Emory University School of Medicine, United States;2. Louisiana State University, United States;3. New Directions Counseling Center, United States;4. University of Utah, United States;1. Faculty of Education, The University of Hong Kong, Hong Kong;2. Faculty of Education, University of Macau, Macau;3. Faculty of Education, East China Normal University, China;4. School of Humanities and Social Science, Chinese University of Hong Kong (Shenzhen), China;1. University of Maryland at College Park, United States of America;2. University of Minnesota, United States of America;3. Louisiana State University, United States of America;4. University of Florida, United States of America;1. Arizona State University – T. Denny Sanford School of Social and Family Dynamics, 850 S. Cady Mall, Tempe, AZ 85287-3701, United States;2. University of California, Irvine – School of Education, 3200 Education Building, Irvine, CA 92697, United States
Abstract:Estimating a trend line through words read correct per minute scores collected across successive weeks is a preferred method to evaluate student response to instruction with curriculum-based measurement of reading (CBM-R). This is due in part, because the slope of that line of best fit is used to predict the trajectory of student performance if the current intervention is maintained. In turn, trend lines should predict future scores with a high degree of accuracy when an intervention is maintained. We evaluated the forecasting accuracy of a trend estimation method currently used in practice (i.e., ordinary least squares), and five alternate methods recently evaluated in CBM-R simulation studies, using actual student data. Results suggest that alternate trend estimation methods predicted future performance with a similar level of accuracy as ordinary least squares trend lines across most conditions, with the exception of slopes estimated via Bayesian analysis. Bayesian trend lines estimated using informed prior distributions yielded noticeably less biased and more precise predictions when applied to short data series relative to all other estimation methods across most conditions. Outcomes from the current study highlight the need to further explore the viability of Bayesian analysis to evaluate individual time series data.
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