Title: Learning
1A study in Curriculum Minds
Bureau of
Educational
BEHAVIORAL PREDICTIONS UNIT
Deb Davis Scott Migdalski William
Taylor investigators
Analytics
Learning
Note the play on words from the Television
series Criminal Minds is strictly intended to
provide educational lightheartedness, leading to
a remembrance of the material.
2Using Analytics to Profile Behaviors for
Student Success
- The Crime Ignorance
- The Evidence
- Reduced test scores
- Unhappy teachers
- Remediation at college level
- The Victims our students
- The Unknown Subject (UnSub)
- The teaching method that suits that student!
3As we Quest Onward, Remember . . .
- Education is the most powerful weapon you can use
to change the world. - - Nelson Mandela
4The story line
- How can the teacher know?
- Education Experience Instinct
- A vignette of personal reflection
5- Descriptive?
- Data
- Diagnostic?
- Assignments
- Predictive?
- Future likelihood
- Prescriptive?
- Change the future
6Learning Analytics Defined
- the measurement, collection, analysis and
reporting of data about learners and their
contexts, for purposes of understanding and
optimising sic learning and the environments in
which it occurs(Scheffel, Drachsler, Stoyanov,
Specht, 2014, p. 117) - In other words, the more we learn about our
students, the better we can aid them in learning. - The cycle of learning analytics allows for the
data to be compiled and analyzed to direct
intervention for learners.
7Learning Analytics
- By funneling in elements of descriptive data from
prior actions and traits, educators can diagnose
issues and thus predict the pitfalls students may
face and prescriptively redirect those students. - How does it happen?
- What does it take?
- How does it work?
- What will it do?
8Big Data
- What is Big Data?
- Laymans terms - Big data is just a vastly large
amount of data that cannot be analyzed at one
time.
- Big Data is state-of-the-art techniques and
technologies to catch, collection, allocate,
accomplish and explore petabyte- or larger-sized
datasets with high-speed and varied patterns that
predictable data management methods are unable to
control (Drigas Leliopoulos, 2014).
9How "Big" is Data?
- Bit (Single Binary Digit) 1 or 0
- 8 bits 1 byte
- 1024 byte 1 Kilobyte
- 1024 Kilobytes 1 Megabyte
- 1024 Megabytes 1 Gigabyte
- 1024 Gigabytes 1 Terabyte
- 1024 Terabytes 1 Petabyte
- To help understand how gigantic Big Data is, look
at the infographic on the next slide that
explains about Petabytes!
10(No Transcript)
11The Data Story
- How did we get to this point?
- The buildup of Big Data starts before the
invention of Google in 1998 and before Apple
began in 1976 (Barnes, 2013). - Hollerith Tabulating Machine allowed the 1890
Census to be complete in about a year (Truesdell,
1965).
12The Data Story
- Holleriths Tabulation Machine Company merged
with Computing-Tabulating-Recording Company in
1911 and became International Business Machines
Corporation (IBM) in 1924 (Austrian, 1982). - Tesla predicts pocket computers in 1926 (Kennedy,
1926) - Pfleumer creates magnetic tape in 1928 (Weiss,
2000)
13The Data Story
- In 1944, Rider predicts 2040 Yale library would
need 6000 miles of shelving (Kent, Lancour
Daily, 1980). - Data storage of tax returns and fingerprints
planned in 1965 (Kraus, 2011). - Codd creates relational database model in 1970
(Gray, 2004)
14How Learning Analytics can make us better
15Converting Reality to Data (Adapting Traits)
- Students generally know themselves. (Ngidi,
2013). - People have different characteristics which
affect their life affairs even the way they
learn is influenced by these personal
characteristics (Boroujeni, A., Roohani, A.,
Hasanimanesh, A., 2015, p. 212) - Aptitude tests discover relevant training
programs, identify talents, and allow for traits
to become data (Barrett, 2012)
(Furnham, Monsen, Ahmetoglu, 2009, p. 770)
16Using the Past to Predict the Future
- Student Data Points
- Student Behavior Data Points
- Next Stop Lrng Analytics Funnel
- Determine Predictors-Course Success
- Sample Method Linear Regression to Correlate
- Student Data/Course Predictors
17Adapting Students Traits to Data Points
18Selecting the Significant Data Points for Course
19Charting the Most Significant Data Points
20Selecting Significant Influential Data Points
21Learning Analytics Dashboards
(Dringus 2012)
22LA Profiles Prescriptive Interventions
- Using Student Data/Behavior and Applying
Learning Analytics to PROFILE Todays Learners
and Improve Teaching and Learning - (Curriculum Minds Team 2015)
23Learning Analytics Support Valid Prescriptions
Proactive Course Predictors of Success
Reactive Student Perf. Improv. Plan
Increase Amount of Time Reading, Reviewing, and
Responding to Discussion Board Posts
24Did we Solve the Case?
25Summary
- Our students should not be bound by ignorance of
their own learning style.
26Conclusion
- We have found our unknown subject That learning
method that allows early detection of academic
issues. Using the analytics of learning, we can
continue to push onward toward the elimination of
ignorance in this field! - Break the chains of learning challenges
27As we Return from this Quest, Remember . . .
- Never doubt that a small group of thoughtful,
committed citizens can change the world. Indeed,
it is the only thing that ever has. - - Margaret Mead
28Questions?
29References
- Austrian, G. D. (1982). Herman Hollerith The
forgotten giant of information processing.
Columbia. - Barrett, J. (2012). Ultimate aptitude tests.
electronic resource assess and develop your
potential with numerical, verbal and abstract
tests. London Philadelphia Kogan Page, 2012. - Barnes, T. J. (2013). Big data, little history.
Dialogues in Human Geography 3 297302, doi
10.1177/2043820613514323 - Boroujeni, A., Roohani, A., Hasanimanesh, A.
(2015). The Impact of Extroversion and
Introversion Personality Types on EFL Learners'
Writing Ability. Theory Practice In Language
Studies, 5(1), 212-218. doi10.17507/tpls.0501.29 - Drigas, A. S. Leliopoulos, P. (2014). The use
of big data in education. International Journal
of Computer Science Issues, 11(5). 58. - Dringus, L. P. (2012). Learning Analytics
Considered Harmful. Journal Of Asynchronous
Learning Networks, 16(3), 87-100.
30References
- Furnham, A., Monsen, J., Ahmetoglu, G. (2009).
Typical intellectual engagement, Big Five
personality traits, approaches to learning and
cognitive ability predictors of academic
performance. The British Journal Of Educational
Psychology, 79(Pt 4), 769-782. doi10.1348/9781854
09X412147 - Kennedy, G., Ioannou, I., Zhou, Y., Bailey, J.,
O'Leary, S. (2013). Mining interactions in
immersive learning environments for real-time
student feedback. Australasian Journal Of
Educational Technology, 29(2), 172-183. - Kent, A., Lancour, H., Daily, J. E. (1980).
Encyclopedia of Library and Information Science,
29. CRC Press. - Ngidi, D. P. (2013). Students' personality traits
and learning approaches. Journal Of Psychology In
Africa, 23(1), 149-152.
31References
- Scheffel, M., Drachsler, H., Stoyanov, S.,
Specht, M. (2014). Quality Indicators for
Learning Analytics. Journal Of Educational
Technology Society, 17(4), 117-132. - Truedsell, Leon E. (1965). The development of
punch card tabulation in the Bureau of the Census
1890-1940. United States Government Printing
Office. p. 51. - Weiss, E.A. (2000). Magnetic recording, the first
100 years. IEEE, Annals of the History of
Computing 22(1). doi 10.1109/MAHC.2000.815472