2004
DOI: 10.3102/10769986029001067
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Models for Value-Added Modeling of Teacher Effects

Abstract: The use of complex value-added models that attempt to isolate the contributions of teachers or schools to student development is increasing. Several variations on these models are being applied in the research literature, and policy makers have expressed interest in using these models for evaluating teachers and schools. In this article, we present a general multivariate, longitudinal mixed-model that incorporates the complex grouping structures inherent to longitudinal student data linked to teachers. We summ… Show more

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Cited by 361 publications
(361 citation statements)
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References 24 publications
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“…Viewed in this light, the challenges of VAM estimation are those faced in identifying causal relationships with panel data more generally. VAM estimation has proven to be difficult in non-experimental settings and there is no consensus on what the best model of student achievement is or the best approach to estimating the portion attributable to teachers (McCaffrey et al 2004;Kane & Staiger 2008, Rothstein 2009, 2010Koedel & Betts 2011). Much of this difficulty stems from the non-random assignment of students to teachers both within and across schools.…”
Section: B Measuring Teacher Qualitymentioning
confidence: 99%
“…Viewed in this light, the challenges of VAM estimation are those faced in identifying causal relationships with panel data more generally. VAM estimation has proven to be difficult in non-experimental settings and there is no consensus on what the best model of student achievement is or the best approach to estimating the portion attributable to teachers (McCaffrey et al 2004;Kane & Staiger 2008, Rothstein 2009, 2010Koedel & Betts 2011). Much of this difficulty stems from the non-random assignment of students to teachers both within and across schools.…”
Section: B Measuring Teacher Qualitymentioning
confidence: 99%
“…The current research largely treats the effects of context on attitude development as if it is consistent over time, when it is possible that they are also dynamically changing, having different effects sizes at different times, or disappearing entirely as real-world conditions change. Historically, value-added models analysing longitudinal data have addressed this issue to study academic achievement in relation to classroom context and teacher performance on students (Doran and Lockwood 2006;McCaffrey et al 2004), however, this method has not yet been applied to attitude development. As previous research has noted, there is an age effect on prejudice, but the ages that apply to this dataset (∼13-17 years) have been found to be a stabilizing time for adolescent's attitudes (Raabe and Beelmann 2011).…”
Section: Time Mattersmentioning
confidence: 99%
“…Importantly, the classroom-level error θ ij y reflects classroom-level variation in student test score gains, including both persistent and transitory effects (such as a "barking dog" effect that influences all students in the classroom at the time the test is administered). The literature provides separate estimates for these two effects using longitudinal student and teacher data and estimating models similar to (1) (see, for example, Goldhaber 2002;Hanushek et al 2005;Jacob and Lefgren 2005;McCaffrey et al 2004;Nye et al 2004;and Rothstein 2009). Estimates of the persistent classroom effects may capture teacher-, student-, and school-related factors that influence student achievement.…”
Section: Impact Modelsmentioning
confidence: 99%