It is our pleasure to invite contributions to the NIPS 2013 Workshop on

Data Driven Education
December 9-10, 2013
Lake Tahoe, Nevada, USA
lytics.stanford.edu/datadriveneducation

Important Dates:
 + Paper Submission --- October 9th, 2013
 + Author notification --- October 23rd, 2013
 + Camera ready deadline for accepted submissions --- October 28th, 2013
 + Finalized workshop schedule out --- October 30th, 2013
 + Data Driven Ed Workshop --- December 9th or 10th, 2013 (TBA)

Workshop Description:
  Given the incredible technological leaps that have changed so many
aspects of our lives in the last hundred years, it's surprising that our
approach to education today is much the same as it was a century ago. While
successful educational technologies have been developed and deployed in
some areas, we have yet to see a widespread disruption in teaching methods
at the primary, secondary, or post-secondary levels. However, as more and
more people gain access to broadband internet, and new technology-based
learning opportunities are introduced, we may be witnessing the beginnings
of a revolution in educational methods.  In the realm of higher education,
rising college tuition accompanied with cuts in funding to schools and an
ever increasing world population that desires high-quality education at low
cost has spurred the need to use technology to transform how we deliver
education.

  With these technology-based learning opportunities, the rate at which
educational data is being collected has also exploded in recent years as an
increasing number of students have turned to online resources, both at
traditional universities as well as massively open-access online courses
(MOOCs) for formal or informal learning. This change raises exciting
challenges and possibilities particularly for the machine learning and data
sciences communities.

  These trends and changes are the inspiration for this workshop, and our
first goal is to highlight some of the exciting and impactful ways that our
community can bring tools from machine learning to bear on educational
technology. Some examples include (but are not limited to) the following:

 + Adaptive and personalized education
 + Assessment: automated, semi-automated, and peer grading
 + Gamification and crowdsourcing in learning
 + Large scale analytics of MOOC data
 + Multimodal sensing
 + Optimization of pedagogical strategies and curriculum design
 + Content recommendation for learners
 + Interactive Tutoring Systems
 + Intervention evaluations and causality modeling
 + Supporting collaborative and social learning
 + Data-driven models of human learning

  The second goal of the workshop is to accelerate the progress of research
in these areas by addressing the challenges of data availability. At the
moment, there are several barriers to entry including the lack of open and
accessible datasets as well as unstandardized formats for such datasets. We
hope that by (1) surveying a number of the publicly available datasets, and
(2) proposing ways to distribute other datasets such as MOOC data in a
spirited panel discussion we can make real progress on this issue as a
community, thus lowering the barrier for researchers aspiring to make a big
impact in this important area.

Target Audience
 + Researchers interested in analyzing and modeling educational data,
 + Researchers interested in improving or developing new data-driven
educational technologies,
 + Others from the NIPS community curious about the trends in online
education and the opportunities for machine learning research in this
rapidly-developing area.

Confirmed speakers:
 + Ken Koedinger, CMU
 + Andrew Ng, Coursera
 + Peter Norvig, Google
 + Zoran Popovic, UW
 + Jascha Sohl-Dickstein, Stanford/Khan Academy
 + Daniel Seaton, MIT/EdX

Confirmed Panelists:
 + Eliana Feasley, Khan Academy,
 + Una-May O'Reilly, MIT,
 + and well as the invited speakers.

Organizers:
 + Jonathan Huang, Stanford ([email protected])
 + Sumit Basu, Microsoft Research ([email protected])
 + Kalyan Veeramachaneni, CSAIL, MIT ([email protected])

Submission details:
  Submissions should follow the NIPS format and are encouraged to be up to
six pages. Papers submitted for review do not need to be anonymized. There
will be no official proceedings, but the accepted papers will be made
available on the workshop website. Accepted papers will be either presented
(both) as a poster and a short spotlight presentation. We welcome
submissions on novel research work as well as extended abstracts on work
recently published or under review in another conference or journal (please
state the venue of publication in the latter case); we encourage submission
of visionary position papers on the emerging trends in data driven
education.  Please submit papers in PDF format to [email protected].

For more information, please visit: lytics.stanford.edu/datadriveneducation

-- 
Jonathan Chung-Kuan Huang
[email protected]
http://www.stanford.edu/~jhuang11
+(650) 248-4441
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