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Making Data-Based Decisions

Making Data-Based Decisions. Tim Lewis, Ph.D. University of Missouri OSEP Center on Positive Behavioral Interventions and Supports pbis.org. Data-Based Decision Making. Determine what questions you want to answer Determine what data will help to answer questions

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Making Data-Based Decisions

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  1. Making Data-Based Decisions Tim Lewis, Ph.D. University of Missouri OSEP Center on Positive Behavioral Interventions and Supports pbis.org

  2. Data-Based Decision Making • Determine what questions you want to answer • Determine what data will help to answer questions • Determine the simplest way to get data • Put system in place to collect data • Analyze data to answer questions Focus on both Academic and Social Outcomes

  3. 1. Determine what questions you want to answer Examples Can we predict problems/success? When/where/who? Possible “function” of problem behavior? Who needs targeted or intensive academic supports? What environmental changes/supports are needed?

  4. 2. Determine what data will help to answer questions • Existing data set(s) • Current data collection • Additional / new data • Confidence in accuracy? • Complete picture?

  5. 3. Determine the simplest way to get data • Agreement on definitions • Standard forms / process • Frequency of collection • Target “Multi-purpose” data/use Train ALL staff on use & provide on-going TA

  6. 4. Put system in place to collect data • Build on existing systems • Add components over time • Central entry point • Electronic

  7. 5. Analyze data to answer questions • Trends • Instruction & supports in place/not in-place • Pre/post “big outcomes” • Comparisons (norm / local) • Relative growth • Absolute growth

  8. By Location

  9. By Behavior

  10. By Student

  11. By # of Referrals

  12. Final Thoughts Don’t collect data for collection sake – make sure informs the process Don’t “drown” in data – keep focused on the question Data without context are simply numbers

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