PCRS: Personalized Course Recommender System Based on Hybrid Approach
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Abstract The traditional system of selecting courses to carry out research work is time consuming, risky and a tedious task, that not only badly affect the performance but the learning experience of a researcher as well. Therefore, choosing appropriate courses in seminal years could help to do research in a better way. This Study presents a recommender system that will suggest and guide a learner in selecting the courses as per their requirement. The Hybrid methodology has been used along with ontology to retrieve useful information and make accurate recommendations. Such an approach may be helpful to learners to increase their performance and improve their satisfaction level as well. The proposed recommender systems would perform better by mitigating the weakness of basic individual recommender systems.
[1] Daniyal M. Alghazzawi,et al. A Survey of Artificial Intelligence Techniques Employed for Adaptive Educational Systems within E-Learning Platforms , 2017, J. Artif. Intell. Soft Comput. Res..
[2] Filip Radlinski,et al. Online Evaluation for Information Retrieval , 2016, Found. Trends Inf. Retr..
[3] Pei-Chann Chang,et al. A Hybrid Course Recommendation System by Integrating Collaborative Filtering and Artificial Immune Systems , 2016, Algorithms.