Title :
Performance comparison of top N recommendation algorithms
Author :
Ghulam Mustafa;Ingo Frommholz
Author_Institution :
Institute for Research in Applicable Computing University of Bedfordshire Luton, UK
fDate :
7/1/2015 12:00:00 AM
Abstract :
In traditional recommender systems, services/items are recommended to the user based on the initial ratings while the results comes from the predicted rating values are not considered which further refers to top N recommendations. In top N recommendation algorithms, recommendation process is further enhanced by predicting the missing ratings where the basic objective is to find the items that might be interest of a user. Performance comparison and evaluation of different top N recommendation algorithms is quite challenging for large datasets where selection of an appropriate algorithm can help to improve the recommendation process by predicting missing ratings. Therefore, in this paper we analyse and evaluate the 6 different top N recommendation algorithms using accuracy metrics such as precision and recall on Movie-lense 100K dataset from the Group-lens. Our main finding is the selection of Top N recommendation algorithm that perform significantly better than other recommender algorithms in pursuing the top-N recommendation process.
Keywords :
"Collaboration","Recommender systems","Algorithm design and analysis","Prediction algorithms","Motion pictures","Principal component analysis"
Conference_Titel :
Future Generation Communication Technology (FGCT), 2015 Fourth International Conference on
Electronic_ISBN :
2377-2638
DOI :
10.1109/FGCT.2015.7300256