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User Preference Quantity versus Recommendation Performance: A Preliminary Study

机译:用户偏好数量与推荐性能:初步研究

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Recommender system has become one of the most promising techniques in the era of big data. It aims to help users to quickly find the valuable information from the massive data. Many recommendation approaches have been proposed in recent years. Currently, a majority of researchers still pay attention on designing more effective and efficient methods, and they usually put all the user data into model training without considering the quantity of individual preferences. However, we argue that not all user preferences contribute to the adopted models, especially for active users who generate plentiful preferences. We claim that some representative preferences contain enough information to profile users and thus are enough to get sound recommendations. Particularly, we attempt to explore the relationship between the quantity of user preferences and recommendation performance, and focus on the representative preference selection. In order to achieve this, we first elaborate the recommendation performance tendency on different sub datasets splitted by the quantity of user preferences. We consider both the rating prediction and the top-N item recommendation tasks. Furthermore, we propose several preference selection strategies to choose the most representative preferences. Finally, we conduct several series of experiments on a large public data set and experimentally conclude that part of user preferences are able to generate desirable recommendations at a rather lower computational cost.
机译:推荐系统已成为大数据时代最有前途的技术之一。它旨在帮助用户从大规模数据中快速找到有价值的信息。近年来提出了许多推荐方法。目前,大多数研究人员仍然注意设计更有效和高效的方法,并且通常将所有用户数据放入模型训练,而不考虑个别偏好的数量。但是,我们认为并非所有用户偏好都有助于采用的模型,特别是对于生成丰富偏好的活动用户。我们声称一些代表偏好包含足够的信息来配置用户,因此足以获得合理的建议。特别是,我们尝试探索用户偏好和推荐性能数量之间的关系,并专注于代表偏好选择。为了实现这一目标,我们首先在通过用户偏好数量拆分的不同子数据集中阐述了推荐性能趋势。我们考虑评分预测和TOP-N项目推荐任务。此外,我们提出了几种偏好选择策略来选择最具代表性的偏好。最后,我们在大型公共数据集上进行多次实验,并通过实验得出结论,用户偏好的一部分能够以相当较低的计算成本产生所需的建议。

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