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EDM 2010 : The Third International Conference on Educational Data Mining

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Conference Series : Educational Data Mining
 
Link: http://educationaldatamining.org/EDM2010/
 
When Jun 11, 2010 - Jun 13, 2010
Where Pittsburgh, PA, USA
Submission Deadline Mar 10, 2010
Notification Due Apr 21, 2010
Categories    education   data mining   machine learning   artificial intelligence
 

Call For Papers

The Third International Conference on Educational Data Mining brings together researchers from computer science, education, psychology, psychometrics, and statistics to analyze large data sets to answer educational research questions. The increase in instrumented educational software, as well as state databases of student test scores, has created large repositories of data reflecting how students learn. The EDM conference focuses on computational approaches for using those data to address important educational questions. The broad collection of research disciplines ensures cross fertilization of ideas, with the central questions of educational research serving as a unifying focus. This Conference emerges from preceding EDM workshops at the AAAI, AIED, ICALT, ITS, and UM conferences.

Topics of Interest

We welcome papers describing original work. Areas of interest include but are not limited to:

Improving educational software. Many large educational data sets are generated by computer software. Can we use our discoveries to improve the software’s effectiveness?

Domain representation. How do learners represent the domain? Does this representation shift as a result of instruction? Do different subpopulations represent the domain differently?

Evaluating teaching interventions. Student learning data provides a powerful mechanism for determining which teaching actions are successful. How can we best use such data?

Emotion, affect, and choice. The student’s level of interest and willingness to be a partner in the educational process is critical. Can we detect when students are bored and uninterested? What other affective states or student choices should we track?

Integrating data mining and pedagogical theory. Data mining typically involves searching a large space of models. Can we use existing educational and psychological knowledge to better focus our search?

Improving teacher support. What types of assessment information would help teachers? What types of instructional suggestions are both feasible to generate and would be welcomed by teachers?

Replication studies. We are especially interested in papers that apply a previously used technique to a new domain, or that reanalyze an existing data set with a new technique.

Best practices for adaptation of data mining techniques to EDM. We are especially interested in papers that present best practices or methods for the adaptation of techniques from data mining and other relevant literatures to the specific needs of analysis of educational data.

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