Publication details

Improving the Classification of Study-related Data through Social Network Analysis

Authors

BAYER Jaroslav BYDŽOVSKÁ Hana GÉRYK Jan OBŠÍVAČ Tomáš POPELÍNSKÝ Lubomír

Year of publication 2011
Type Article in Proceedings
Conference Memics 2011 - Seventh Doctoral Workshop on Mathematical and Engeneering Methods in Computer Science
MU Faculty or unit

Faculty of Informatics

Citation
Field Informatics
Keywords Data Mining; Weka; Pajek; Social Network Analysis
Description The Information System of Masaryk University (IS MU) hosts applications utilized for managing study-related records, e-learning tools and those facilitating communication inside the University. This paper is concerned with improvement of results obtained with Excalibur, a tool for mining study-related data, when linked data have been added. These data describe social dependencies gathered from e-mail and discussion boards conversation. We first describe results based on the original (non-linked) data that are periodically saved into Excalibur data warehouse. Then focus on extraction of social dependencies namely relations and communication among students. We describe a method for feature extraction from the social dependencies. New features were explored by social network analysis and visualization tool Pajek and added to the original data. We show that such enriched data allows to significantly improve results obtained with data mining methods. We demonstrate this general technique on different tasks that concern classification of successful/non-successful students at Faculty of Informatics MU.
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