Name Networks: A Content-Based Method for Automated Discovery of Social Networks to Study Collaborative Learning
Date
2009
Authors
Gruzd, Anatoliy
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Abstract
As a way to gain greater insight into the operation of Library and Information Science (LIS)
e-learning communities, the presented work applies automated text mining techniques to text-
based communication to identify, describe and evaluate underlying social networks within
such communities. The main thrust of the study is to find a way to use computers to
automatically discover social ties that form between students just from their threaded
discussions. Currently, one of the most common but time consuming methods for discovering
social ties between people is to ask questions about their perceived social ties via a survey.
However, such a survey is difficult to collect due to the high cost associated with data
collection and the sensitive nature of the types of questions that must be asked. To overcome
these limitations, the paper presents a new, content-based method for automated discovery of
social networks from threaded discussions dubbed name networks. When fully developed,
name networks can be used as a real time diagnostic tool for educators to evaluate and
improve teaching models and to identify students who might need additional help or students
who may provide such help to others.
Description
Keywords
social network analysis, named entity recognition, name networks