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Spring Data Review Workday School Leadership Teams. May 20 & 21, 2014. Acknowledgements. The material for this training day was developed by Ingham ISD:
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Spring Data Review WorkdaySchool Leadership Teams May 20 & 21, 2014
Acknowledgements The material for this training day was developed by Ingham ISD: • Theron Blakeslee, John Endahl, Melanie Kahler, Matt Phillips, Jeanne Tomlinson, Kelly Trout, Nate Stevenson Laura Colligan and Mary Jo Wegenke Content based on the work of… • MiBLSi project • George Batsch, University of South Florida • Robert Balfanz, Everyone Graduates Center and • Johns Hopkins University • Roland Good and Rob Horner, University of Oregon • George Sugai, University of Connecticut • Joe Torgesen, Florida Center for Reading Research • Dawn Miller, Shawnee Mission School District, Kansas
Learning Targets Participants will be able to: • Analyze process data and outcome data to identify academic and/or behavior areas in need of improvement • Make connections between process and outcome data and its impact on student achievement • Identify an academic and/or behavioral priority based upon the data analysis and use the Continuous Improvement Process to address the priority
Where to access materials for today: 1. POMPOMS! The documents we are using today are on flash drives attached to ISD pompoms. MTSS Implementers Website http://mtss-implementers.wiki.inghamisd.org Building Data Review page OR Cute as they are, please don’t take them home!
Materials you will need today • Data Review Workbook(MTSS Wiki & hardcopy) • Problem Solving Guide (MTSS Wiki & hardcopy) • Worked Example Problem Solving Guide (MTSS Wiki & hardcopy) • Log-in Information: Illuminate Ed, BAA, pbisapps.org, and SWIS • Process Data: PETR/SWEPT, PET-M, BSA, BoQ, SAS
Role of The School Leadership Team • Acts on school-wide data (Process Data and Student Outcomes) on a regular basis • Sends content area specific information to the appropriate staff to address during content area meetings • Provides all stakeholders with an overview of the data and areas for celebration and areas targeted for growth. This includes teachers, support staff, volunteers and parents. • Utilizes work groups to address relevant needs • Following through on action plans and updating progress along the way • Sends school-wide information to district level staff
New and Improved Materials • Page 4 in the Data Toolkit • Trend Data Columns on the School-wide Literacy and Mathematics Overview Forms • Vocabulary in the Problem Solving Guide aligned with School Improvement Process • Spring to Fall Transition Action Plan
New Page 4 in Data Tool Kit Evaluating Previous Plan
I. GATHER Collect Data Problem Solving Guide Data-based Problem Solving IV. DO Implement, Monitor & Evaluate II. STUDY Analyze & Problem Identification/ Analysis III. PLAN Develop Improvement Plan
Scheduling of Action Items First Few Days of School
Schoolwide Overview- Academics Where to find the academic data! Record information on the Illuminate note taking form.
Data Analysis…Something to think about What … Assumptions do we bring to this discussion? Important points seem to pop out? Patterns, categories, or trends are emerging? Seems to be surprising or unexpected? Additional data sources do we need to explore? Inferences, explanations, or conclusions might we draw? Solutions might we explore as a result of our conclusions? got data? Now What?, Solution Tree Press, 2012
5 Reasons Why Problem Exists • got data? Now What?, Solution Tree Press, 2012
Pursuing Worthy Problems • An issue recurs with frequency, year after year. • An issue is pervasive across multiple grade levels, student groups or school settings. • An issue consumes high levels of energy, time and resources. • Even after an improvement bump, performance plateaus and subsequent data flatline. • got data? Now What?, Solution Tree Press, 2012
Remember… The Building Leadership Team… Does not have to solve every problem Needs to study building data to determine school-wide and grade-level priorities Will identify the appropriate individual(s) who will address these needs (e.g., which grade-level teams need to address the identified needs)
Team Time • Review/update previous action plan. Page 4 in Data Toolkit • Use the School-wide overview sheets for problem(s) Identification • Prioritize “Problems” • Identify a problem; complete Continuous Improvement Process process and create an action plan. • Move on to second (and third) problem, if able • Identify building Glows and Grows You do!
Process Data - Behavior pbisapps.org Benchmarks of Quality (BoQ) • Completed annually by school leadership teams • Tier 1 SWPBIS implementation fidelity check • 53 benchmarks across 10 critical elements of implementation. • Identifies areas of strength and need; informs problem analysis and action planning. • 70% Implementation Goal Self-Assessment Survey (SAS) • Completed annually by building staff • Fidelity check of PBIS implementation across (a) school wide, (b) non-classroom, (c) classroom, and (d) individual students • Seven key elements of the Implementation Subsystems • Informs of areas of strength and need, including communication between leadership team and staff • 70% Implementation Goal
Early Warning Signs (EWS) • Routinely available data; available early in the school year • Better predictor than background characteristics • Cut points selected to balance yieldand accuracy. • Helps target interventions • Informs of patterns and trends
Early Warning Signs (EWS) ATTENDANCE: Missing more than 10% of instructional time BEHAVIOR: Suspensions (ISS or OSS); Minor or Major ODRs • ISS or OSS: 6 hours of academic instruction lost per day • ODR: 20 minutes of academic instruction lost for student per referral COURSE PERFORMANCE: Course failures, grade point average; credit accrual • Combinations of academic indicators can reduce graduation likelihood to 55%
EWS Outcome Data - Building Level ATTENDANCE: > 90% missing more than 10% of instructional time • State of Ohio retrospective analysis of top/bottom 10% academic outcomes • Balances yield vs. accuracy BEHAVIOR: > 80% with 0 Suspensions (ISS or OSS) • “High Quality Instruction” research • MTSS Targeted Intervention COURSE PERFORMANCE: ACT-Explore Data • Course Failures (MTSS Model of 80% corrected for accuracy to 85-90%) • Credit Accrual is building-specific • Combinations of academic indicators can reduce graduation likelihood to 55%
Schoolwide Overview – Behavior Worked Example
BSA: Building Self-Assessment What Does BSA Data Tell you? Scale: Not Started (N) — In Progress (I) — Achieved (A) — Maintaining (M) —
Benchmarks of Quality (BoQ) Tier 1 SWPBIS implementation fidelity check 53 benchmarks across 10 critical elements: Identifies areas of strength and need to inform action plans Completed annually by school leadership teams Process Data SnapshotsBEHAVIOR Self-Assessment Survey (SAS) • Completed annually by building staff • Fidelity check of PBIS implementation across (a) schoolwide, (b) non-classroom, (c) classroom, and (d) individual students • Seven key elements of the Implementation Subsystems • Informs of areas of strength and need, including communication
Benchmarks of Quality (BoQ) Tier 1 SWPBIS implementation fidelity check 53 benchmarks across 10 critical elements: Identifies areas of strength and need to inform action plans Completed annually by school leadership teams Process Data SnapshotsBEHAVIOR Self-Assessment Survey (SAS) • Completed annually by building staff • Fidelity check of PBIS implementation across (a) schoolwide, (b) non-classroom, (c) classroom, and (d) individual students • Seven key elements of the Implementation Subsystems • Informs of areas of strength and need, including communication
Process Data Snapshots: PBIS Self-Assessment Survey (SAS) Targeted Implementation Supports While summary data from the SAS provides a general sense of a building’s PBIS systems, more focused analysis can inform a team of the most vital and influential next steps. Low Implementation Status High Staff Priority PBIS Subsystem
Problem Solving Guide: Step 1 • Determine your (first) problem to be addressed today based one what you’ve derived from: • Previous SIP • Outcome Data • Process Data and Process Data Snapshots
Problem Solving Guide: Step 2 Complete a Problem Analysis: Hypothesize what may be contributing to the problem Again, your data and the Snapshots can inform this discussion.
I. GATHER Collect Data Problem Solving Guide Data-based Problem Solving IV. DO Implement, Monitor & Evaluate II. STUDY Analyze & Problem Identification/ Analysis III. PLAN Develop Improvement Plan