Scalable Hybrid Recommender System with Temporal Information

Autor: Jin Tae Kim, Jae Woo Kim, Sungchang Lee, Ghulam Sarwar, Farman Ullah, Kyeong-Deok Moon
Rok vydání: 2012
Předmět:
Zdroj: The Journal of the Institute of Webcasting, Internet and Telecommunication. 12:61-68
ISSN: 1738-4281
DOI: 10.7236/jiwit.2012.12.2.61
Popis: Recommender Systems have gained much popularity among researchers and is applied in a number of applications. The exponential growth of users and products poses some key challenges for recommender systems. Recommender Systems mostly suffer from scalability and accuracy. The accuracy of Recommender system is somehow inversely proportional to its scalability. In this paper we proposed a Context Aware Hybrid Recommender System using matrix reduction for Hybrid model and clustering technique for predication of item features. In our approach we used user item-feature rating, User Demographic information and context information i.e. specific time and day to improve scalability and accuracy. Our Algorithm produce better results because we reduce the dimension of items features matrix by using different reduction techniques and use user demographic information, construct context aware hybrid user model, cluster the similar user offline, find the nearest neighbors, predict the item features and recommend the Top N- items.
Databáze: OpenAIRE