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Exploring Data Use & School Performance in an Urban School District

Exploring Data Use & School Performance in an Urban School District. Kyo Yamashiro, Joan L. Herman, & Kilchan Choi. UCLA Graduate School of Education & Information Studies National Center for Research on Evaluation, Standards, and Student Testing (CRESST)

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Exploring Data Use & School Performance in an Urban School District

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  1. Exploring Data Use & School Performance in an Urban School District Kyo Yamashiro, Joan L. Herman, & Kilchan Choi UCLA Graduate School of Education & Information StudiesNational Center for Research on Evaluation,Standards, and Student Testing (CRESST) CRESST ConferenceUCLASeptember 8, 2005

  2. Context & Background • Large urban school district in the Pacific Northwest • Value-added Assessment System implemented in District • Need for more info on schools’ use of data (VA and other)

  3. Data Use & Evidence-based Practice • Data use at the heart of test-based reforms (NCLB) & continuous improvement efforts • Little evidence of effects of data use on performance • Some evidence shows limited access and capacity of schools to use data

  4. Study Components CRESST conducts multi-year, multi-faceted study of data use: • Transformation Plan Review - content analysis of school improvement plans • Interviews, surveys, and observations from site visits of case study schools • Analysis of district achievement and survey data • Observations of school presentations about progress

  5. Sampling • Latent variable, multilevel analyses used to estimate gains (student-level, longitudinal ITBS data in reading & math) • Gains based on growth from 3rd to 5th grade for 2 cohorts in each school: • 3rd graders in 1998 • 3rd graders in 2001 • Within each cohort, 3 performance subgroups (average, low, high)

  6. Sampling (cont’d) • 13 Schools met the following criteria: • Greater than district average % of low-SES students • Starting point below district average • “Beat the Odds” Sample (7): • Higher than average gains • Relatively more consistent across: • 2 cohorts (98 & 01) • reading and math • performance subgroups (hi, avg, lo)

  7. Sample • Extremely diverse set of 13 small, elementary schools • African American student populations between 11 - 81% • Asian American student populations between 2 - 59% • White student populations between 5-59% • Enrollment range: 134 to 533

  8. Transformation Plan Review • TP Review Rubric (Rating of 1 to 3) • Types of evidence or indicators used • Breadth; depth; VA data; technical sophistication • Identification of goals/objectives or needs analysis • Identification of solution strategies • Specificity; based on theory/ research/data • Analysis of progress • Inclusion of stakeholders

  9. Case Study Site Visits • 2-day visits to 4 case study sites: • Interviews/focus groups: • Principal • Building Leadership Team (BLT) • Teachers (primary, upper) • Teacher Survey

  10. Additional Achievement Analyses • Latent Variable Multiple Cohort (LMC) Design (with SEMs) • Estimating gains on ITBS based on data across 5 cohorts (1998 to 2002) • Gains for performance subgroups: • Average (students starting at school mean initial status) • High (students starting at 15 points above school’s average) • Low (students starting at 15 points below school’s average) • Patterns of growth differ from 2-cohort analysis

  11. Results: Achievement • Differences between Pre- and Post-Transformation Plan Reform • High/Avg: 4 schools - consistent growth across rdg & math & subgroups • Low: 6 schools - left some subgroups behind in math and/or rdg • Very Low: 3 schools - no growth or negative gains

  12. Results: Data Use • Data Use Is Improving but Still Varied • Over 3 years, schools increased use of assessment results and other evidence • Schools increased mention of VA data • Data Review Process is Inclusive When Capacity Exists • Principal often conduit (filter, interpret) • However, many schools developed collaborative processes for data review • Transf Planning Process May become More Centralized (Less Inclusive) in Later Years

  13. Results: Data Use (cont’d) • Accessible and Excessive Data • Teachers use data for schoolwide reform and (to lesser degree) instructional planning • Teachers are overwhelmed with amount of data • More Capacity Needed • Whether schools integrate data into instructional decisions tended to be person- or climate-driven • Principals need help, too • More Diagnostic, Instructionally Sensitive Data Needed • State testing data not seen as useful, valid, timely, or interpretable • lack of continuity in tests (from grade to grade) • lack of diagnostic info (item analyses) • lack of individual growth info (pre-post) • District assessments seen as more helpful to instruction

  14. Results: Data Use & Achievement • Pre-Post Gains & Data Use Practices

  15. Results: Data Use & Achievement (cont’d) • Ratings overlap for 7 of 13 schools • For the most discrepant case (Polk): • showing high gains but low data use • school in chaos, with new leadership • For remaining 5 moderate discrepancies, no case study data

  16. Conclusions • Less use of data for instructional planning probably a function of: • type of data provided • leadership & climate • capacity • Principals and teacher leaders need more help in interpreting and using data • Data use and gains appear to have a moderate link for struggling schools; more case study info needed • Need for more research on how to use value-added (gains) in an accountability setting

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