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Enhancing Teacher Data Literacy: What SEA s and their partners can do

A Joint Event from the Mid-Atlantic Comprehensive Center and the Appalachia Regional Comprehensive Center February 5, 2014. Enhancing Teacher Data Literacy: What SEA s and their partners can do. Welcome from MACC and ARCC. Marty Orland, MACC Director Delaware District of Columbia

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Enhancing Teacher Data Literacy: What SEA s and their partners can do

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  1. A Joint Event from the Mid-Atlantic Comprehensive Center and the Appalachia Regional Comprehensive Center February 5, 2014 Enhancing Teacher Data Literacy: What SEAs and their partners can do

  2. Welcome from MACC and ARCC • Marty Orland, MACC Director Delaware District of Columbia Maryland New Jersey Pennsylvania • Sharon Harsh, ARCC Director Kentucky Tennessee Virginia West Virginia

  3. Housekeeping • Overall format of webinar • Technical issues to jpeters2@wested.org • Key features for attendees • Participants • All participants are muted • Chat • Use chat box to share questions or thoughts • Specify public vs. private • Polling • Questions/results will appear in polling box • Evaluation • Link to evaluation will be provided at end • Please provide email address if not registered

  4. Polls are located on the right side of the screen.To better see the poll questions, minimize the participant and chat windows by clicking on the light blue arrow.

  5. Poll 1: Tell Us About Yourself • What is your job responsibility/role? • State education agency staff • Credentialing/licensing agency staff • Dean or administrator from a school of education • Faculty member • School or school district staff • Comprehensive Center staff • Other • What state(s) do you represent? • Delaware • District of Columbia • Kentucky • Maryland • New Jersey • Pennsylvania • Tennessee • Virginia • West Virginia • Multiple states – Mid-Atlantic • Multiple states – Appalachia • Other

  6. Agenda Today’s Agenda • Setting the stage – Ellen Mandinach, WestEd • The role of the SEA – Janice Poda, CCSSO • The role of IHEs and licensure agencies – Ellen Mandinach, Edith Gummer, & Jeremy Friedman, WestEd • Description from Delaware – Elizabeth Farley-Ripple, University of Delaware • Discussion – all • Next steps – Ellen Mandinach 6

  7. The Need to Improve Teacher Preparation and Data Literacy • Emphasis from policymakers • Emerging standards from CAEP and other professional organizations • NCTQ 7

  8. Why is Data-Driven Decision-Making Important for Education? • Proliferation of diverse sources of data • Need for evidence-based practice • Changes in policymakers’ emphasis from data for accountability and compliance to data for continuous improvement 8

  9. What is Data Literacy for Teachers? • The ability to transform information into actionable instructional knowledge and practices by collecting, analyzing, and interpreting all types of data (assessment, school climate, behavioral, snapshot, longitudinal, moment-to-moment, etc.) to help determine instructional steps. It combines an understanding of data with standards, disciplinary knowledge and practices, curricular knowledge, pedagogical content knowledge, and an understanding of how children learn. 9

  10. Data Literacy for Teaching: Categories of Skills • Inquiry Processes • Habits of Mind • General Data Use • Data Quality • Data Properties • Data Use Procedural Skills • Transform Data to Information • Transform Data to Implementation 10

  11. An Important Caveat • Data literacy is NOT the same as assessment literacy • There are differences • The differences are important • Typically called data literacy but most often really assessment literacy • Counter example – CCSSO (2012) 11

  12. Systemic Nature of the Reform Issue • Complex • Interacting players • Change cannot happen in isolation • Change comes slowly 12

  13. Who Are the Key Players • State Education Agencies • State Licensure Agencies • Professional organizations • Schools of education • Testing organizations • Local Education Agencies • Others 13

  14. A Metaphor from the Data Quality Campaign • The Flashlight • vs. • The Hammer 14

  15. What Can SEAs Do? • Integrate data literacy into licensure requirements • Be informed by research and policy trends • Recognize the difference between data literacy and assessment literacy • Work with schools of education to align curricula • Work with districts to understand needs 15

  16. Poll 2: Status of Reform in Your State • Is data literacy a topic of action/reform in your state? • • Yes, definitely • • Yes, but not a strong emphasis • • No 16

  17. Poll 3: Data Literacy in Courses and Licensure Requirements • Is data literacy something that you have included in courses and licensure requirements in your state agency or institution? • • Yes, definitely • • Yes, but not a strong emphasis • • No 17

  18. Some Questions • Are any states in the process of updating data literacy requirements for teacher preparation programs based on updated InTASC standards, the Danielson framework, or other guidance? • If you are a state licensure person, are you trying to strengthen or make more explicit the requirements around data literacy skills? • What are your challenges, successes? What kinds of resources, supports, or assistance might you need? 18

  19. The Role of the SEA Janice Poda Education Workforce Council of Chief State School Officers (CCSSO)

  20. The Role of SEAs • SEAs have the power of persuasion through the bully pulpit, role modeling, and the enforcement of law through policy to ensure that teachers and leaders are data literate. • Examples of policy levers to ensure that teachers and leaders are data literate are: • Program approval • Licensure • Renewal of a license • Professional Learning 20

  21. CCSSO’s Emphasis on Data Literacy • InTASC Standards • Task Force report titled “Our Responsibility, Our Promise” • 7 pilot states participating in the Network for Transforming Educator Preparation • Revision of Leadership Standards • ISLLC (practicing school leaders) • ELCC (candidates for school leadership) • Principal supervisor (district office employees who support, develop and evaluate principals)

  22. Where States Are Currently • Data from 49 states and the District of Columbia have some sort of documentation that addresses what knowledge and skills teacher candidates need in order to be licensed. The documentation ranges from outdated to up-to-date. • 21 states address data literacy • 37 states address assessment literacy • Six states (AR, AZ, DC, NV, ND, and SC) make strong use of the InTASC standards (CCSSO, 2011) and one state (SD) uses the Danielson framework (2013). • Source: Mandinach, Friedman, Gummer (2014)

  23. Excerpt from Rhode Island Recently Adopted Program Approval Standards • 1.4 Data-Driven Instruction: Approved programs ensure that candidates develop and demonstrate the ability to collect, analyze, and use data from multiple sources- including research, student work and other school-based and classroom- based sources- to inform instructional and professional practice.

  24. Determining Success • Data literacy is not just knowledge but the application of knowledge into effective practice. • States need effective measures to determine if candidates are data literate. • The results of these measures and the support and development teachers and leaders receive should help determine if a candidate is recommended for licensure.

  25. The Role of IHEs and Licensure Agencies Ellen Mandinach, Edith Gummer, & Jeremy Friedman WestEd

  26. The Role of IHEs and Licensure Agencies – Mandinach, Gummer, & Friedman, WestEd • Three Projects: The Foundation for our Thinking • Spencer Foundation convening • Gates Foundation data literacy conference • Dell Foundation schools of education project 26

  27. Take Home Messages from Prior Work • Lack of clarity in the terminology – data literacy means different things to different people • Developmental continuum for educators’ acquisition of data literacy skills and knowledge is unknown • Process to elevate the importance to schools of education to have them help build human capacity is complex • How best to integrate data literacy into higher education – stand-alone or cross program? • Courses or integrated suites of courses? • Professional development is not enough • Recognition of the systemic nature of the issue 27

  28. The Dell Project: Objective • To understand how many and what kinds of courses and experiences are being offered in schools of education that help prepare educators to use data. 28

  29. The Dell Project: The Survey • Objective – Examine what schools of education are doing to enhance teachers’ data literacy • Response rate: 24.9 percent (208 out of 836). [26.8 percent / 38 out of 142] • Respondents were from 47 states, DC, and the Virgin Islands. • Enroll between 51,840-96,543 pre-service teacher candidates. • 67.3 [68.4] percent are public colleges or universities (this reflects the second sample). • 83.7 percent offer teaching candidates bachelor’s degrees, 76.4 percent offer master’s degrees. 29

  30. The Dell Project: Syllabus Review • Purpose – To drill down to see what courses address 30

  31. The Dell Project: Licensure Requirements • Purpose – To examine existing licensure and certification requirements for data literacy skills • Collaborators – The Data Quality Campaign, NASDTEC 31

  32. Survey Results • 91.1 [90.6] percent claim that a focus on use of data is a sustained component of their teacher prep program in all or multiple courses. • 45.7 [32.0] percent plan on developing and implementing at least one new course focused on use of data. • Note: “Don’t know” responses were not calculated into percentages for any survey results slides. 32

  33. Survey Results – What they’re doingStand-Alone Course • 24.1 [26.3] percent claim to have one stand-alone use of data course, 38.2 [42.1] claim to have multiple stand-alone courses. • 44.2 percent say the stand-alone course is a requirement for a teaching degree. • 47.6 percent say the target audience are pre-service teacher candidates. • 63.5 percent of the time the course’s instructor of record is tenured or tenure track. • 77.1 percent of the courses examine authentic data; 87.4 percent examine simulated data.

  34. Survey Results – What they’re doingIntegrated Course(s) • 95.6 [97.0%] percent claim to have use of data integrated within existing courses. • Integrated most prominently into pedagogy and teaching methods courses. • Many respondents also stated data use was prominently addressed in assessment courses. Confusing data literacy for assessment literacy? • The course(s) instructors of record are most frequently tenured or tenure track professors. • 76.9 percent of the courses examine authentic data; 85.4 percent examine simulated data.

  35. Survey Interpretations and Caveats National • Many schools did not respond. • Possible that some schools which did not participate did so because they do not have courses on data use. • Clear that most schools believe they are teaching data use, particularly integrated into other courses. Is this really the case? • Clear that data use is a focus among the responding schools. Or is it?

  36. Results from the Syllabus Review - Focus • 76% focused on design, implementation, and analysis of assessments that would be used at the individual student or classroom level • Secondary focus – formative assessments, state assessments, or assessment policy issues 36

  37. Results from the Syllabus Review - Assignments • Lesson or unit plan with assignments • Analysis or writing of assessment items • ------------------------------------------------------ • Summative assessment • Analysis of data • Rubric design • Formative assessment • classroom and individual students (benchmark or interim) • Statistical analysis • Case studies • Portfolio assessment 37

  38. Results from the Licensure Review – General Characteristics • Amount of data-related skills (range across states) • Does it address data (12 states – no) • Does it address assessment (2 states without) • Does it list specific skills (7 states without) • How specific are the statements (range across states) • InTASC (6 states) • Developmental continuum (7 states) • Specific data standard (8 states) • Danielson (1 state) • Data literacy (22 states) vs. assessment literacy (37 states) 38

  39. Results from the Licensure Review – Skills (59) • Average number of states per skill = 18.61; s.d. = 11.06 • Average number of skills per state = 21.3; s.d. = 13.8 [NJ – 19; PA – 15; DE – 49 (InTASC); MD – 12; DC – 10; VA – 20; WV – 21; KY – 24; TN – 20] • Most frequent skills: assess, collaborate, plan, evaluate, monitor, communicate, use multiple sources, involve stakeholders, make decisions, document/review, provide feedback, self-assess, adjust, analyze, use data, collect/ gather, interpret 39

  40. Results from the Licensure Review - Skills • Moderately frequent skills: identify, adapt, use technology, inquiry, reflect, question, differentiate, access, implement, design, ethics, use research, disaggregate • Least frequent skills: individualize, use statistics, act, summarize, predict/ hypothesize, synthesize, solve problems, develop assessments, integrate, review, process, infer 40

  41. Results from the Licensure Review – Local Highlights • DE – strong data and data literacy emphasis • DC – data standard but really about assessment • MD – more about assessment literacy • NJ – little specifics, more on assessment • PA – more about assessment literacy • KY – more about assessment literacy • TN – has a data standard • VA – strong data emphasis • WV – quite specific, more on assessment 41

  42. Data Quality Campaign Survey Results - 2013 • 19 states with licensure policies, including DE, KY, MD, TN, & VA • DE is considered a “leading” state • KY and VA considered “growing” states 42

  43. Poll 4: Reality Check • From your perspective do these results reflect the reality of what’s going on in your states? • Yes • No • Unsure 43

  44. Teacher and Leader Data Literacy Elizabeth N. Farley-Ripple School of Education University of Delaware

  45. Context and Impetus for Change • External • Delaware ahead of the curve in data (DQC) • RTTT investment in data coaches (Amplify) • DE DOE imposing regulations based on CCSSO report Teacher and Leader Data Literacy • Internal • Shift in approach to staffing courses • Graduate • Ed Leadership faculty research in EBDM • Emerging teacher leadership program • Undergraduate • Internal data and new performance assessment • Change in program structure

  46. Data Literacy Efforts: What are we doing? • Undergraduate • Shift in assessment course from strictly assessment/measurement toward how you are using that information to make instructional decisions • Baby steps toward bringing in more than assessment data Teacher and Leader Data Literacy Bridging pre-service and in-service training, differentiated to roles and responsibilities • Graduate • MEd in Teacher Leadership forthcoming with two courses to help teacher leaders to understand, manage, and use data for student assessment, instructional planning, and school improvement • EdDprogram: program revision with 12 credits dedicated to data and evidence based decision-making (focus on secondary data, research use, and collecting data to identify, diagnose, and solve problems)

  47. How is making this happen? What’s working What’s still challenging Structure Need for dialogue across content areas Culture Academic freedom (to be respected!) and other traditions Leadership Need for faculty buy-in External Cooperating teachers Testing culture Lack of clear standards for data literacy Lack of consequential external demands Teacher and Leader Data Literacy • Structure • School of Education has no silos so faculty time can flow between programs • Culture • Culture of being proactive and responsive to external demands • Leadership • Program coordinators use levers - such as external demands and faculty representation in national dialogue - to achieve goals

  48. Takeaways Teacher and Leader Data Literacy • Higher education may be hard to move but it is possible! • Internally, structures, culture and leadership can support change • Externally, national dialogue, consumer demand, and regulation are important levers Thank you! University of Delaware School of Education Elementary Teacher Education M.Ed. In Teacher Leadership Ed.D. in Education Leadership

  49. What Needs to Happen? Discussion • Schools of education need to discuss how to introduce data literacy • Licensure agencies need to be more explicit • Discussions about what if Praxis includes data literacy • Discussions among stakeholders about how to make the integration happen 49

  50. Discussion • How will the certification agencies respond? • Who are your partners in the effort to reform and change? • What are your biggest challenges? 50

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