| Literature DB >> 26834450 |
Christopher Schatschneider1, Richard K Wagner1, Sara A Hart1, Elizabeth L Tighe1.
Abstract
The present study employed data simulation techniques to investigate the one-year stability of alternative classification schemes for identifying children with reading disabilities. Classification schemes investigated include low performance, unexpected low performance, dual-discrepancy, and a rudimentary form of constellation model of reading disabilities that included multiple criteria. Data from Spencer et al. (2014) were used to construct a growth model of reading development. The parameters estimated from this model were then used to construct three simulated datasets wherein the growth parameters were manipulated in one of three ways: A stable-growth pattern, a mastery learning pattern and a fan-spread pattern. Results indicated that overall the constellation model provided the most stable classifications across all conditions of the simulation, and that classification schemes were most stable in the fan-spread condition, and were the least stable under the mastery learning growth pattern. These results also demonstrate the utility of data simulations in reading research.Entities:
Year: 2016 PMID: 26834450 PMCID: PMC4732731 DOI: 10.1080/10888438.2015.1107072
Source DB: PubMed Journal: Sci Stud Read ISSN: 1088-8438