Research Work Area Recommendation based on Collaborative Filtering
Автор: Richa Sharma, Sharu Vinayak, Rahul Singh
Журнал: International Journal of Education and Management Engineering(IJEME) @ijeme
Статья в выпуске: 2 vol.7, 2017 года.
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In this work we present RWARS, a novel recommender system that recommends research work area. So far a number of recommender systems have been developed in the field of e-commerce, e-services, e-library, entertainment, tourism and social networking sites. However, when it comes to the area of education, not much work has been done. So to extend the utility of Recommender systems in the field of education, we have developed RWARS. We have used Cosine similarity and Tanimoto coefficient for developing our system. The aim of this work is to compare the results obtained using each approach to find the most optimal one. Evaluation parameters that have been used are: Mean square error, Root mean square error and Coverage. At present, RWARS is still in its initial phase and its applicability can be further enhanced by converting it into an online system and it surely will prove to be a great boon for young researchers to select the most appropriate research area for them.
Collaborative filtering, Cosine similarity, Tanimoto coefficient, Recommender systems
Короткий адрес: https://sciup.org/15014057
IDR: 15014057
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