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BiCycle: Item Recommendation with Life Cycles

机译:BiCycle:具有生命周期的项目建议

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Recommender systems have attracted much attention in last decades, which can help the users explore new items in many applications. As a popular technique in recommender systems, item recommendation works by recommending items to users based on their historical interactions. Conventional item recommendation methods usually assume that users and items are stationary, which is not always the case in real-world applications. Many time-aware item recommendation models have been proposed to take the temporal effects into the considerations based on the absolute time stamps associated with observed interactions. We show that using absolute time to model temporal effects can be limited in some circumstances. In this work, we propose to model the temporal dynamics of both users and items in item recommendation based on their life cycles. This problem is very challenging to solve since the users and items can co-evolve in their life cycles and the sparseness of the data become more severe when we consider the life cycles of both users and items. A novel time-aware item recommendation model called BiCycle is proposed to address these challenges. BiCycle is designed based on two important observations: 1) correlated users or items usually share similar patterns in the similar stages of their life cycles. 2) user preferences and item characters can evolve gradually over different stages of their life cycles. Extensive experiments conducted on three real-world datasets demonstrate the proposed approach can significantly improve the performance of recommendation tasks by considering the inner life cycles of both users and items.
机译:推荐系统在过去的十年中引起了极大的关注,它可以帮助用户在许多应用程序中探索新项目。作为推荐系统中的一种流行技术,项目推荐的工作原理是根据用户的历史互动向他们推荐项目。传统的项目推荐方法通常假定用户和项目是固定的,而在实际应用中并非总是如此。已经提出了许多具有时间意识的项目推荐模型,以基于与观察到的交互关联的绝对时间戳将时间效应纳入考虑范围。我们表明,在某些情况下,使用绝对时间来建模时间效应可能会受到限制。在这项工作中,我们建议根据商品和用户的生命周期对用户和商品的时间动态建模。由于用户和物品的生命周期可能会共同演变,并且当我们同时考虑用户和物品的生命周期时,数据的稀疏性会变得更加严峻,因此解决此问题非常困难。提出了一种名为BiCycle的新颖的时间感知项目推荐模型来应对这些挑战。 BiCycle的设计基于两个重要的观察结果:1)相关的用户或物品通常在其生命周期的相似阶段共享相似的模式。 2)用户的喜好和项目特征可以在其生命周期的不同阶段逐渐发展。在三个真实世界的数据集上进行的广泛实验表明,通过考虑用户和商品的内部生命周期,该方法可以显着提高推荐任务的性能。

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