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Junaid Mubeen Counter the Average
www.fjmubeen.com
1
How to resist aggregate judgements in personalised learning
COUNTER
THE AVERAGE
Junaid Mubeen Counter the Average
www.fjmubeen.com
2
A thought experiment
The way we evaluate an event depends on whether
it is isolated, or part of a larger collection of events.
We will flip a fair coin. If it lands heads, you win $200.
Tails, you lose $100. Would you take the bet? What if we
flipped the coin 100 times, and you were to receive or
pay the net difference?
Thought experiment (Paul Samuelson)
Most people resist the original bet because they cannot
tolerate the 50% chance of losing $100. But they are
prepared to take the second bet, where the losses are
overcome by the wins.
Results
In Education, we often base instruction on work works
‘overall’, even when individual students lose out. Our
approach to personalised learning must resist this impulse
and protect the learning potential of every student.
Reflections
Junaid Mubeen Counter the Average
www.fjmubeen.com
3
Averages are popular
because they succinctly
capture overall trends in
data…
Key concept:
…but students are too
complex to be averaged
out. We must stop teaching
to the mythical ‘average
student’.
Threats to
personalised
learning…and how
to overcome them.
Coming up:
Personalised
Learning
The antidote to ‘averagarian’
approaches to education.
Junaid Mubeen Counter the Average
www.fjmubeen.com
4
Threats to
Personalised
Learning:
SOME EXAMPLES
Machine learning algorithms that power
personalised learning products use averaging
techniques to make recommendations for one
student based on the behaviours of others.
Machine learning
Product providers issue generic usage guidelines for
implementation based on what works ‘overall’, often
ignoring the needs of each learning environment.
Usage guidelines
Efficacy studies evaluate the impact of personalised
learning based on the ‘overall’ effect on students’
learning.
Efficacy studies
Data dashboards quantify students’ achievement based
on their overall progress, disguising their variation
across learning strands.
Learning analytics
Junaid Mubeen Counter the Average
www.fjmubeen.com
5
Six ways to counter the
average
05
02
03
04
06
01
Probe the
context
Dig down to
the individual
Retain
human
judgement
Express
uncertainty
Embrace the
outliers
Iterate fast and
often
5
www.fjmubeen.com
Junaid Mubeen Counter the Average
www.fjmubeen.com
6
01
01 03 050402
Dig down to the individual
Make student-level
reporting the
foundation of your
reporting.
Show student-by-
student breakdowns in
class reports so that
teachers don’t have to
settle for averages.
Keep data privacy
requirements at the
forefront of interface
design.
Show the jaggedness in
each student’s profile by
assessing them across
multiple strands.
Make it easy for users to
drill down to student-level
reports from wherever they
are in the reporting
hierarchy.
Group averages, while useful for analysis, may disguise individual student behaviours.
Junaid Mubeen Counter the Average
www.fjmubeen.com
7
Machines do not always know best.
Embed hard-
coded expert
human
judgement in
your
algorithms.
Evaluate your
product against
human
performance.
Allow educators
to override
automated
decisions.
02Retain human judgement
Junaid Mubeen Counter the Average
www.fjmubeen.com
8
03Probe the context
8Junaid Mubeen Counter the Average
Do not rely solely on
analytics to convey
students’ learning.
Connect with users
on the ground to
understand why the
data looks as it does. Never assume a trend
will transfer from one
context to another -
always account for
local nuances.
There is a human story behind every data point.
Junaid Mubeen Counter the Average
www.fjmubeen.com
9
04Express uncertainty
Averages hide more information than they reveal, often disguising
important individual behaviours.
Use standard
deviations and
other measures
of spread.
Make your
model
assumptions
clear.
Plot time series
data to
illustrate
variation over
time.
Consider
alternatives
measures of
central tendency,
e.g. median.
Visualise
uncertainty,
e.g. error
bands.
01 03 05
0402
Junaid Mubeen Counter the Average
www.fjmubeen.com
05Iterate fast and often
Lean principles are designed to continuously
monitor and act on learning insights.
Record analytics that are easy to access,
easier to understand, and easiest to act
upon.
Leave room for small, regular tweaks to
product and implementation.
Minimise the length of your iteration
cycles.
Build
MeasureLearn
10
Junaid Mubeen Counter the Average
www.fjmubeen.com
11
06Embrace the outliers
In the paradigm of personalised learning, every
student is an outlier.
01
Study the outlier
students in each
distribution and
seek to understand
their behaviours.
02
Never assume the
distribution is a
bell curve without
checking.
03
Consider
alternative
distributions such
as Power Law,
which allow for
more outlier
behaviours.
Junaid Mubeen Counter the Average
www.fjmubeen.com
12
Further
reading
› Risk and Uncertainty: A Fallacy
of Large Numbers
› The End of Average (Todd Rose)
› Visualizing uncertainty in data
› When 'personalised learning’
forgets to be ‘personalised’
› The algorithmic paradox of
personalised learning
› The Lean Product Management
manifesto
Image
sources
› https://www.tibco.com/blog/
2013/04/21/why-is-your-
company-settling-for-just-
average/
› https://blog.gradescope.com/
the-average-student-does-not-
exist-bc885a818145
› https://www.krcs.co.uk/news/
personalised-learning-tk
› https://www.fastweb.com/
uploads/article_photo/photo/
2034785/learn-to-read-on-a-
college-level.jpg
› https://en.wikipedia.org/wiki/
Power_law
Junaid Mubeen Counter the Average
www.fjmubeen.com
13
Want more blogs and resources like this?
Visit www.fjmubeen.com and subscribe
to the fortnightly newsletter.
Stay in
touch
fjmubeen@gmail.com

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Counter the average

  • 1. Junaid Mubeen Counter the Average www.fjmubeen.com 1 How to resist aggregate judgements in personalised learning COUNTER THE AVERAGE
  • 2. Junaid Mubeen Counter the Average www.fjmubeen.com 2 A thought experiment The way we evaluate an event depends on whether it is isolated, or part of a larger collection of events. We will flip a fair coin. If it lands heads, you win $200. Tails, you lose $100. Would you take the bet? What if we flipped the coin 100 times, and you were to receive or pay the net difference? Thought experiment (Paul Samuelson) Most people resist the original bet because they cannot tolerate the 50% chance of losing $100. But they are prepared to take the second bet, where the losses are overcome by the wins. Results In Education, we often base instruction on work works ‘overall’, even when individual students lose out. Our approach to personalised learning must resist this impulse and protect the learning potential of every student. Reflections
  • 3. Junaid Mubeen Counter the Average www.fjmubeen.com 3 Averages are popular because they succinctly capture overall trends in data… Key concept: …but students are too complex to be averaged out. We must stop teaching to the mythical ‘average student’. Threats to personalised learning…and how to overcome them. Coming up: Personalised Learning The antidote to ‘averagarian’ approaches to education.
  • 4. Junaid Mubeen Counter the Average www.fjmubeen.com 4 Threats to Personalised Learning: SOME EXAMPLES Machine learning algorithms that power personalised learning products use averaging techniques to make recommendations for one student based on the behaviours of others. Machine learning Product providers issue generic usage guidelines for implementation based on what works ‘overall’, often ignoring the needs of each learning environment. Usage guidelines Efficacy studies evaluate the impact of personalised learning based on the ‘overall’ effect on students’ learning. Efficacy studies Data dashboards quantify students’ achievement based on their overall progress, disguising their variation across learning strands. Learning analytics
  • 5. Junaid Mubeen Counter the Average www.fjmubeen.com 5 Six ways to counter the average 05 02 03 04 06 01 Probe the context Dig down to the individual Retain human judgement Express uncertainty Embrace the outliers Iterate fast and often 5 www.fjmubeen.com
  • 6. Junaid Mubeen Counter the Average www.fjmubeen.com 6 01 01 03 050402 Dig down to the individual Make student-level reporting the foundation of your reporting. Show student-by- student breakdowns in class reports so that teachers don’t have to settle for averages. Keep data privacy requirements at the forefront of interface design. Show the jaggedness in each student’s profile by assessing them across multiple strands. Make it easy for users to drill down to student-level reports from wherever they are in the reporting hierarchy. Group averages, while useful for analysis, may disguise individual student behaviours.
  • 7. Junaid Mubeen Counter the Average www.fjmubeen.com 7 Machines do not always know best. Embed hard- coded expert human judgement in your algorithms. Evaluate your product against human performance. Allow educators to override automated decisions. 02Retain human judgement
  • 8. Junaid Mubeen Counter the Average www.fjmubeen.com 8 03Probe the context 8Junaid Mubeen Counter the Average Do not rely solely on analytics to convey students’ learning. Connect with users on the ground to understand why the data looks as it does. Never assume a trend will transfer from one context to another - always account for local nuances. There is a human story behind every data point.
  • 9. Junaid Mubeen Counter the Average www.fjmubeen.com 9 04Express uncertainty Averages hide more information than they reveal, often disguising important individual behaviours. Use standard deviations and other measures of spread. Make your model assumptions clear. Plot time series data to illustrate variation over time. Consider alternatives measures of central tendency, e.g. median. Visualise uncertainty, e.g. error bands. 01 03 05 0402
  • 10. Junaid Mubeen Counter the Average www.fjmubeen.com 05Iterate fast and often Lean principles are designed to continuously monitor and act on learning insights. Record analytics that are easy to access, easier to understand, and easiest to act upon. Leave room for small, regular tweaks to product and implementation. Minimise the length of your iteration cycles. Build MeasureLearn 10
  • 11. Junaid Mubeen Counter the Average www.fjmubeen.com 11 06Embrace the outliers In the paradigm of personalised learning, every student is an outlier. 01 Study the outlier students in each distribution and seek to understand their behaviours. 02 Never assume the distribution is a bell curve without checking. 03 Consider alternative distributions such as Power Law, which allow for more outlier behaviours.
  • 12. Junaid Mubeen Counter the Average www.fjmubeen.com 12 Further reading › Risk and Uncertainty: A Fallacy of Large Numbers › The End of Average (Todd Rose) › Visualizing uncertainty in data › When 'personalised learning’ forgets to be ‘personalised’ › The algorithmic paradox of personalised learning › The Lean Product Management manifesto Image sources › https://www.tibco.com/blog/ 2013/04/21/why-is-your- company-settling-for-just- average/ › https://blog.gradescope.com/ the-average-student-does-not- exist-bc885a818145 › https://www.krcs.co.uk/news/ personalised-learning-tk › https://www.fastweb.com/ uploads/article_photo/photo/ 2034785/learn-to-read-on-a- college-level.jpg › https://en.wikipedia.org/wiki/ Power_law
  • 13. Junaid Mubeen Counter the Average www.fjmubeen.com 13 Want more blogs and resources like this? Visit www.fjmubeen.com and subscribe to the fortnightly newsletter. Stay in touch fjmubeen@gmail.com