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An Enhanced Content-Based Recommender System for Academic Social Networks

机译:用于学术社交网络的增强基于内容的推荐系统

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The present study utilizes social computing techniques to enhance the content-based recommender systems. Coined as Enhanced Content-based Algorithm using Social Networking (ECSN), this recommender algorithm is applied in academic social networks to suggest the most relevant items to members of these online societies. In addition to considering user's own preferences, ECSN takes advantage of the interest and preferences of user's friends and faculty mates for providing more accurate recommendations. The research experiments were conducted by applying four different algorithms - random, collaborative, content-based, and ECSN, for 14 consecutive weeks. During this period, 1398 academic items were recommended to all 920 members of Malaysian Experts Academic Social Network (MyExpert). ANOVA tests indicate that the proposed algorithm significantly improves the prediction accuracy of algorithms based on well-known measurements of precision, fallout and F1. It is believed that this study can make a significant contribution to the level of user satisfaction in academic social networks.
机译:本研究利用社交计算技术来增强基于内容的推荐系统。使用社交网络(ECSN)作为增强的基于内容的算法,在学术社交网络中应用了这种推荐算法,向这些在线社会成员建议最相关的物品。除了考虑用户自己的偏好之外,ECSN还利用了用户的朋友和教师伴侣的兴趣和偏好,以便提供更准确的建议。通过将四种不同的算法,基于含量的含量,基于含量的含量为14个连续的几周进行了研究实验。在此期间,建议将1398个学术项目推荐给马来西亚专家学术社会网络(MyExpert)的所有920名成员。 ANOVA测试表明,该算法基于精确,辐射和F1的众所周知的测量,显着提高了算法的预测精度。据信,该研究可以对学术社交网络中的用户满意度进行重大贡献。

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