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Graph-Based Recommendations: Make the Most Out of Social Data

机译:基于图形的建议:充分利用社交数据

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Recommender systems use nowadays more and more data about users and items as part of the recommendation process. The availability of auxiliary data, going beyond the mere user/item data, has the potential to improve recommendations. In this work we examine the contribution of two types of social auxiliary data - namely, tags and friendship links - to the accuracy of a graph-based recommender. We measure the impact of the availability of auxiliary data on the recommendations using features extracted from both the auxiliary and the original data. The evaluation shows that the social auxiliary data improves the accuracy of the recommendations, and that the greatest improvement is achieved when graph features mirroring the nature of the auxiliary data are extracted by the recommender.
机译:推荐系统现在使用越来越多的有关用户和项目的数据,作为推荐过程的一部分。辅助数据的可用性超出Mere User / Item数据,具有提高建议的潜力。在这项工作中,我们检查两种类型的社交辅助数据的贡献 - 即标签和友情链接 - 到基于图形的推荐器的准确性。我们使用从辅助和原始数据中提取的功能来衡量辅助数据的影响对建议的影响。评估表明,社交辅助数据提高了建议的准确性,并且当镜像镜像镜像辅助数据的性质时,实现了最大的改进。

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