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Temporal Recommendation on Graphs via Long- and Short-term Preference Fusion

机译:通过长期和短期偏好融合对图进行时间推荐

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Accurately capturing user preferences over time is a great practical challenge in recommender systems. Simple correlation over time is typically not meaningful, since users change their preferences due to different external events. User behavior can often be determined by individual's long-term and short-term preferences. How to represent users' long-term and short-term preferences? How to leverage them for temporal recommendation? To address these challenges, we propose Session-based Temporal Graph (STG) which simultaneously models users' long-term and short-term preferences over time. Based on the STG model framework, we propose a novel recommendation algorithm Injected Preference Fusion (IPF) and extend the personalized Random Walk for temporal recommendation. Finally, we evaluate the effectiveness of our method using two real datasets on citations and social bookmarking, in which our proposed method IPF gives 15%-34% improvement over the previous state-of-the-art.
机译:随着时间的准确捕获用户偏好是推荐系统中的一个很大的实际挑战。由于用户由于不同的外部事件而改变他们的偏好,因此随着时间的推移通常不有意义。用户行为通常可以由个人的长期和短期偏好确定。如何代表用户的长期和短期偏好?如何利用它们进行时间推荐?为了解决这些挑战,我们提出了基于会议的时间图(STG),其同时使用用户的长期和短期偏好随着时间的推移。基于STG模型框架,我们提出了一种注入偏好融合(IPF)的新推荐算法,并为时间推荐扩展个性化随机步行。最后,我们评估了我们对引文和社会书签的两个实际数据集的方法的有效性,其中我们提出的方法IPF在以前的最先进的情况下提高了15%-34%。

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