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Sensitivity of Teacher Value-Added Estimates to Student and Peer Control Variables March 2012 Presentation to the Association of Education Finance and.

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Presentation on theme: "Sensitivity of Teacher Value-Added Estimates to Student and Peer Control Variables March 2012 Presentation to the Association of Education Finance and."— Presentation transcript:

1 Sensitivity of Teacher Value-Added Estimates to Student and Peer Control Variables March 2012 Presentation to the Association of Education Finance and Policy Conference Matt Johnson Stephen Lipscomb Brian Gill

2 VAMs Used Today Differ in Their Specifications 2 Value-Added Model Student Characteristics Classroom Characteristics Multiple Years of Prior Scores Colorado Growth ModelNo Yes DC IMPACTYesNo FloridaYes New York CityYes No SAS EVAASNo Yes

3  How sensitive are teacher value-added model (VAM) estimates to changes in the model specification? –Student characteristics –Classroom characteristics –Multiple years of prior scores  How sensitive are estimates to loss of students from sample due to missing prior scores? Research Questions 3

4  Teacher value-added estimates are not highly sensitive to inclusion of: –Student characteristics (correlation ≥ 0.990) –Multiple years of prior scores (correlation ≥ 0.987)  Estimates are more sensitive to inclusion of classroom characteristics (correlation = 0.915 to.955)  Estimates are not very sensitive to loss of students with missing prior test scores from sample (correlation = 0.992) –Precision increases when two prior scores are used but fewer teacher VAM estimates are produced Preview of Main Results 4

5  Explore sensitivity to several specifications: –Exclude score from two prior years (Y i,t-2 ) –Exclude student characteristics (X i,t ) –Include class average characteristics  Student data from a medium-sized urban district for 2008–2009 to 2010–2011 school years  All models run using the same set of student observations  Instrument using opposite subject prior score to control for measurement error Baseline Model 5

6 Student LevelClass Level Free or Reduced-Price Meals Disability Gifted Program Participation Lagged Rate of Attendance Lagged Fraction of Year Suspended Race/Ethnicity Gender Age/Behind Grade Level Average Prior Achievement in Same Subject Standard Deviation of Lagged Achievement Number of Students in Classroom Student and Class Characteristics 6

7 Correlation of 6th-Grade Teacher Estimates Relative to Baseline VAM Specification 7 Math (n = 87) Reading (n = 99) Exclude Student Characteristics0.9900.996 Exclude Prior Score from t-20.9930.987 Exclude Student Characteristics and Prior Score from t-2 0.9780.970 Add class average variables0.9550.915 Baseline: Student Characteristics and Prior Scores from t-1 and t-2 Findings are based on VAM estimates from 2008–2009 to 2010–2011 on the same sample of students.

8 Exclude Student Characteristics 1st (Lowest)2nd3rd4th 5th (Highest) Baseline Model 1st (Lowest)955000 2nd590500 3rd0575200 4th00207010 5th (Highest)0001090 Percentage of 6th-Grade Reading Teachers in Effectiveness Quintiles, by VAM Specification 8 Findings are based on VAM estimates for 99 reading teachers in grade 6 from 2008–2009 to 2010–2011 for a medium-sized, urban district. Correlation with baseline = 0.996.

9 Baseline + Class Average Characteristics 1st (Lowest)2nd3rd4th 5th (Highest) Baseline Model 1st (Lowest)8020000 2nd5653000 3rd1510501510 4th05106520 5th (Highest)00102070 Percentage of 6th-Grade Reading Teachers in Effectiveness Quintiles, by VAM Specification 9 Findings are based on VAM estimates for 99 reading teachers in grade 6 from 2008–2009 to 2010–2011 for a medium-sized, urban district. Correlation with baseline = 0.915.

10  Benefits of including two prior years: –More accurate measure of student ability –Increase in precision of estimates  Costs of using two prior years: –Students with missing prior scores dropped –Some teachers dropped from sample  Relative magnitude of costs/benefits? One or Two Years of Prior Scores? 10

11  Estimate two VAMs using one year of prior scores –First VAM includes all students –Second VAM restricts sample to students with nonmissing second prior year of scores  Correlation between teacher estimates: 0.992  Percentage of students dropped: 6.2  Percentage of teachers dropped: 3.9  Net increase in precision from using two prior years –Increase in average standard error of estimates: 2.3% when students with missing scores are dropped –Decrease in average standard error of estimates: 7.6% when second year of prior scores added One or Two Years of Prior Scores? 11

12 Mathematica ® is a registered trademark of Mathematica Policy Research.  Please contact –Matt Johnson MJohnson@mathematica-mpr.com –Stephen Lipscomb SLipscomb@mathematica-mpr.com –Brian Gill BGill@mathematica-mpr.com For More Information 12


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