在大规模推荐系统中基于流聚类和记忆网络增强用户兴趣

Peng Liu, Nian Wang, Cong Xu, Min Zhao, Bin Wang, Yi Ren
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引用次数: 0

摘要

推荐系统(RS)提供基于用户兴趣的个性化推荐服务,被广泛应用于各种平台。然而,有很多用户由于缺乏消费行为而兴趣稀疏,导致推荐效果不佳。这一问题在大规模 RS 中普遍存在,尤其难以解决。为了解决这个问题,我们提出了一种名为 "用户兴趣增强"(UIE)的新方案。该方案利用基于流聚类和记忆网络生成的增强向量和个性化增强向量,从不同角度增强用户兴趣,包括用户资料和用户历史行为序列。UIE 不仅能显著提高兴趣稀疏用户的模型性能,还能显著提高其他用户的模型性能。UIE 是一种端到端的解决方案,易于在排名模型的基础上实现。此外,我们还扩展了我们的解决方案,将类似的方法应用于长尾项目,也取得了很好的改进效果。此外,我们还在大规模工业 RS 中进行了广泛的离线和在线实验。结果表明,我们的模型明显优于其他模型,尤其是对于兴趣稀疏的用户。到目前为止,UIE 已在多个大规模 RS 中得到全面应用,并取得了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing User Interest based on Stream Clustering and Memory Networks in Large-Scale Recommender Systems
Recommender Systems (RSs) provide personalized recommendation service based on user interest, which are widely used in various platforms. However, there are lots of users with sparse interest due to lacking consumption behaviors, which leads to poor recommendation results for them. This problem is widespread in large-scale RSs and is particularly difficult to address. To solve this problem, we propose a novel solution named User Interest Enhancement (UIE) which enhances user interest including user profile and user history behavior sequences using the enhancement vectors and personalized enhancement vector generated based on stream clustering and memory networks from different perspectives. UIE not only remarkably improves model performance on the users with sparse interest but also significantly enhance model performance on other users. UIE is an end-to-end solution which is easy to be implemented based on ranking model. Moreover, we expand our solution and apply similar methods to long-tail items, which also achieves excellent improvement. Furthermore, we conduct extensive offline and online experiments in a large-scale industrial RS. The results demonstrate that our model outperforms other models remarkably, especially for the users with sparse interest. Until now, UIE has been fully deployed in multiple large-scale RSs and achieved remarkable improvements.
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