Xiaoyan YuManas TungareWeigo YuanYubo YuanManuel A. Pérez-QuiñonesEdward A. Fox
Syllabi are important educational resources. Gathering syllabi that are freely available and creating useful services on top of the collection presents great value for the educational community. However, searching for a syllabus on the Web using a generic search engine is an error-prone process and often yields too many irrelevant links. In this chapter, we describe our empirical study on automatic syllabus classification using support vector machines (SVM) to filter noise out from search results. We describe various steps in the classification process from training data preparation, feature selection, and classifier building using SVMs. Empirical results are provided and discussed. We hope our reported work will also benefit people who are interested in building other genre-specific repositories.
Xiaoyan YuManas TungareWeigo YuanYubo YuanManuel A. Pérez-QuiñonesEdward A. Fox
Irene Yu‐Hua GuHenrik AnderssonRaúl Vicen
Zhijin ZhaoYunshui ZhouFei MeiJiandong Li
Saeid HamidiFarbod RazzaziMasoumeh P. Ghaemmaghami
Carol PedersenJoachim Diederich