Title: How Dialogue Empowers Assumption Testing
1How Dialogue EmpowersAssumption Testing
Creating Confident Data Users
- Lynn Sawyer,
- Miravia Training Associate
-
- lsawyer50_at_aol.com
2Creating Confident Data Users
- Shifting practitioners from being data-givers to
responsible, informed, collaborative, data-users
3Levels of Competence
- Conscious of Unconscious Competence
- Unconscious Competence
- Conscious Competence
- Conscious Incompetence
- Unconscious Incompetence
4Best Outcomes
- Collective understanding that merges the best of
multiple perspectives - Challenges for both the data literate and the
data shy - Embrace a mission to reduce the phobia and
toxicity of data
5- You cant fake
- farming
- or
- teaching.
- John Soderman,
- Douglas County, Nevada, Superintendent
6- What are some of the indicators that a farmer
might use to determine if he is successful
throughout the course of a years time?
7Switch it out Professionals Learning in Community
- Great conversations are the hallmark
- Difficult conversations happen regularly and
without toxicity
8Its in the dialogue
- Leaders such as Schmoker, Dufour, Wheatley,
Costa, Eisner, Scott, - Garmston, and Senge
- tell us that
- change in schools will happen,
- must happen,
- one conversation at a time.
9- How we talk is effecting who we are becoming---
- DIALOGUE ----- DISCUSSION
thinking holistically thinking
analytically making connections making
distinctions
surfacing and inquiring surfacing and
inquiring into assumptions into assumptions
developing shared developing agreement meaning
on action
Seeking common understanding Seeking decisions
10Why data-driven dialogue may be counter-cultural
- A feeling of inadequacy about technical and
statistical knowledge - Competing priorities for TIME
- The way data have been used--collected for
delivery to someone else, or placing blame,
rather than for self-assessment, reflection and
improvement of practice
11Conversation Protocols
- Are brain-compatible
- Ensure psychological safety
- Chosen by facilitator with deliberate
intentionality, otherwise data becomes something
to fear and defend against - Support the group in being unsettled or
uncomfortable while talking about the right
things
12Protocols provide the place to eat the frog
- If you have a frog to eat, eat it in the
morning, because by noon youll be quite fond of
it. - Susan Scott, Fierce Conversations
13Effective Participation Patterns forData-Driven
Dialogue
- Begin with the individuals ideas and
perspectives to establish readiness - Rarely start with a whole-group pattern
- Provide scaffolding for structured sharing and
meaning-making as an active, personal, AND social
process
14Meaning is defined in and by relationship
- Up/down, large/small, close/far
- Is an individual who is 511 short or tall?
- As a member of a professional basketball team?
- Is Kenai, AK, near or far?
- How about in relationship to Florida?
1557 degrees is data
- Mid-March day in New England, unusually warm--57
degrees (balmy) - Teachers filing in to a workshop in
- El Paso wearing hats, gloves, coats, while
complaining of the cold-- also 57 degrees - 57 degrees is just data
- Hot or cold is interpretation
16The real methodology for system change
begins and ends with ongoing, authentic
conversations about important questions.Tony
Wagner
17Trigger inquiry by use of a 3rd point
- Student work samples
- Teacher-made common assessments
- Lesson plans or teaching artifacts
- Thought-provoking articles or books
- Selected readings
18Say Something
- Choose a partner
- Read silently to the designated stopping point.
- When each partner is ready, stop and
- Say Something.
- a key point, insight, personal connection,
or question
- Continue the process until you have completed the
selection.
19Guiding Assumptions
- Data have no meaning
- Knowledge is both a personal and social
construction - There is a reciprocal influence between the
culture of the workplace and the thinking and
behavior of its members - Understanding should precede planning
- Cycles of inquiry, experimentation and reflection
accelerate continuous growth and learning - Norms of data-driven collaborative inquiry
generate continuous improvements in student
learning
20Examine and Interrogate Assumptions
- Causal theories are always based on assumptions
- See what does not want to be seen
- (The longer we avoid an issue, the easier it
gets to avoid it) - Faced with the choice between changing ones
mind and proving that there is no need to do so,
almost everybody gets busy on the proof. John
Kenneth Galbraith
21COLLABORATIVE LEARNING CYCLE -
Activating and Engaging
Organizing and Integrating
Managing Modeling Mediating Monitoring
Exploring and Discovering
22COLLABORATIVE LEARNING CYCLE
Activating and Engaging
- Surfacing Experiences and Expectations
- What are some predictions we are making?
- With what assumptions are we entering?
- What are some questions we are asking?
- What are some possibilities for learning that
this experience presents to us?
23A Data Display
- From UNICEF report The State of the Worlds
Children 2007 - A table showing 21 rich countries listed in order
of average rank--1high-- for 6 dimensions of
child well-being (material well-being, health and
safety, education, family, behaviors and risks,
subjective well-being) - From performance of 15 year olds in developed
countries on international achievement tests - Not listed due to insufficient data are
Australia, Iceland, Japan, Mexico, New Zealand
24Moreabout the report
- Netherlands is the most densely populated and has
the greatest diversity, Finland is the least
diverse - Higher scoring countries do not believe that
child well-being is the sole responsibility of
the educational system - What are your predictions, assumptions and
questions?
25COLLABORATIVE LEARNING CYCLE
Activating and Engaging
- Surfacing Experiences and Expectations
- What are some predictions we are making?
- With what assumptions are we entering?
- What are some questions we are asking?
- What are some possibilities for learning that
this experience presents to us?
26Possible Qs
- What countries are included?
- What measures were compared?
- What were the dependent/independent variables?
27COLLABORATIVE LEARNING CYCLE
Exploring and Discovering
- Analyzing the Data
- What important points seem to pop-out?
- What are some emerging patterns, categories or
trends ? - What seems to be surprising or unexpected?
- What are some things we have not yet explored?
28COLLABORATIVE LEARNING CYCLE
Organizing and Integrating
- Generating Theory
- What inferences/explanations/conclusions might we
draw? (causation) - What additional data sources might we explore to
verify our explanations? (confirmation)
- What are some solutions we might explore as a
result of our conclusions? (action) - What data will we need to collect to guide
implementation? (calibration)
29Data begets data
- What have other countries learned that we need to
know? - What are some other data bits that you need to
confirm causal theories? - What is of interest/importance related to the
work you now do?
30Assumptions Worth Testing
- That the data-literate have it right
- That we have common frames of reference and
mental models that shape our assumptions - That we do what we know (that there is no
Knowing-Doing Gap) - That students understand the expected standard
and how quality work looks
31- Teachers blaze the path to knowledge generation
when pairs, small groups, and entire faculties
intentionally and purposely use data as a source
for analyzing progress and proactively planning
for improvement. - Lipton and Wellman, Data-Driven Dialogue A
Facilitators Guide to Collaborative Inquiry, 2004
32You as dialogue starter
- Orchestrate epiphanies--ideas with lights around
them and exclamation points - Cause thinking that is intellectually and
emotionally compelling - Susan Scott--Fierce Conversations
33- What are the implications of dialogue to empower
the testing of assumptions?