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TaDb: A time-aware diffusion-based recommender algorithm

机译:TaDb:一种基于时间的基于扩散的推荐算法

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摘要

Traditional recommender algorithms usually employ the early and recent records indiscriminately, which overlooks the change of user interests over time. In this paper, we show that the interests of a user remain stable in a short-term interval and drift during a long-term period. Based on this observation, we propose a time-aware diffusion-based (TaDb) recommender algorithm, which assigns different temporal weights to the leading links existing before the target user's collection and the following links appearing after that in the diffusion process. Experiments on four real datasets, Netflix, MovieLens, FriendFeed and Delicious show that TaDb algorithm significantly improves the prediction accuracy compared with the algorithms not considering temporal effects.
机译:传统的推荐器算法通常会不加区分地使用早期和近期记录,这会忽略用户兴趣随时间的变化。在本文中,我们表明用户的利益在短期间隔内保持稳定,并在长期内漂移。基于此观察,我们提出了一种基于时间感知的基于扩散的(TaDb)推荐程序算法,该算法将不同的时间权重分配给目标用户收集之前存在的主导链接,以及随后在传播过程中出现的后续链接。对四个真实数据集(Netflix,MovieLens,FriendFeed和Delicious)的实验表明,与不考虑时间影响的算法相比,TaDb算法可显着提高预测精度。

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