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Forgetting mechanisms for scalable collaborative filtering

机译:渐进式协作过滤的遗忘机制

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Collaborative filtering (CF) has been an important subject of research in the past few years. Many achievements have been made in this field, however, many challenges still need to be faced, mainly related to scalability and predictive ability. One important issue is how to deal with old and potentially obsolete data in order to avoid unnecessary memory usage and processing time. Our proposal is to use forgetting mechanisms. In this paper, we present and evaluate the impact of two forgetting mechanisms—sliding windows and fading factors—in user-based and item-based CF algorithms with implicit binary ratings under a scenario of abrupt change. Our results suggest that forgetting mechanisms reduce time and space requirements, improving scalability, while not significantly affecting the predictive ability of the algorithms.
机译:协作过滤(CF)在过去几年中一直是重要的研究课题。在该领域已经取得了许多成就,但是,仍然需要面对许多挑战,主要涉及可伸缩性和预测能力。一个重要的问题是如何处理旧的和可能过时的数据,以避免不必要的内存使用和处理时间。我们的建议是使用遗忘机制。在本文中,我们介绍并评估了在突然变化的情况下,具有隐式二进制等级的基于用户和基于项目的CF算法中,两个遗忘机制(滑动窗口和衰落因子)的影响。我们的结果表明,遗忘机制可减少时间和空间需求,提高可伸缩性,同时不会显着影响算法的预测能力。

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