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Hydra

机译:九头蛇

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摘要

This paper discusses the combination of collaborative and content-based filtering in the context of web-based recommender systems. In particular, we link the well-known MovieLens rating data with supplementary IMDB content information. The resulting network of user-item relations and associated content features is converted into a unified mathematical model, which is applicable to our underlying neighbor-based prediction algorithm. By means of various experiments, we demonstrate the influence of supplementary user as well as item features on the prediction accuracy of Hydra, our proposed hybrid recommender. In order to decrease system runtime and to reveal latent user and item relations, we factorize our hybrid model via singular value decomposition (SVD).
机译:本文讨论了在基于Web的推荐器系统中协作过滤和基于内容的过滤的结合。特别是,我们将知名的MovieLens分级数据与补充的IMDB内容信息链接在一起。用户项目关系和相关内容特征的结果网络将转换为统一的数学模型,适用于我们基于底层邻居的预测算法。通过各种实验,我们证明了补充用户以及商品功能对我们提出的混合推荐器Hydra的预测准确性的影响。为了减少系统运行时间并揭示潜在的用户和项目关系,我们通过奇异值分解(SVD)对混合模型进行分解。

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