کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
515549 | 867045 | 2013 | 17 صفحه PDF | دانلود رایگان |

Collaborative filtering (CF) algorithms are techniques used by recommender systems to predict the utility of items for users based on the similarity among their preferences and the preferences of other users. The enormous growth of learning objects on the internet and the availability of preferences of usage by the community of users in the existing learning object repositories (LORs) have opened the possibility of testing the efficiency of CF algorithms on recommending learning materials to the users of these communities. In this paper we evaluated recommendations of learning resources generated by different well known memory-based CF algorithms using two databases (with implicit and explicit ratings) gathered from the popular MERLOT repository. We have also contrasted the results of the generated recommendations with several existing endorsement mechanisms of the repository to explore possible relations among them. Finally, the recommendations generated by the different algorithms were compared in order to evaluate whether or not they were overlapping. The results found here can be used as a starting point for future studies that account for the specific context of learning object repositories and the different aspects of preference in learning resource selection.
► We evaluated CF algorithms with two datasets extracted from MERLOT repository.
► Optimized parameters were found in order to generate recommendations.
► Recommendations were generated based on implicit and explicit preferences of users.
► The recommendations are somewhat related to other endorsement mechanisms in MERLOT.
► There is huge difference between the recommendations using the two distinct datasets.
Journal: Information Processing & Management - Volume 49, Issue 1, January 2013, Pages 34–50