Community Recommendation in Social Networks With Sparse Data

Emad Rahmaniazad, Purdue University

Abstract

Recommender systems are widely used in many domains. In this work, the importance of a recommender system in an online learning platform is discussed. After explaining the concept of adding an intelligent agent to online education systems, some features of the Course Networking (CN) website are demonstrated. Finally, the relation between CN, the intelligent agent (Rumi), and the recommender system is presented. Along with the argument of three different approaches for building a community recommendation system. The result shows that the Neighboring Collaborative Filtering (NCF) outperforms both the transfer learning method and the Continuous bag-of-words approach. The NCF algorithm has a general format with two various implementations that can be used for other recommendations, such as course, skill, major, and book recommendations.

Degree

M.Eng.

Advisors

Salama, Purdue University.

Subject Area

Artificial intelligence|Educational technology|Information science|Management|Web Studies

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