A general tail item representation enhancement framework for sequential recommendation

IF 3.4 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers of Computer Science Pub Date : 2023-12-28 DOI:10.1007/s11704-023-3112-y
Mingyue Cheng, Qi Liu, Wenyu Zhang, Zhiding Liu, Hongke Zhao, Enhong Chen
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Abstract

Recently advancements in deep learning models have significantly facilitated the development of sequential recommender systems (SRS). However, the current deep model structures are limited in their ability to learn high-quality embeddings with insufficient data. Meanwhile, highly skewed long-tail distribution is very common in recommender systems. Therefore, in this paper, we focus on enhancing the representation of tail items to improve sequential recommendation performance. Through empirical studies on benchmarks, we surprisingly observe that both the ranking performance and training procedure are greatly hindered by the poorly optimized tail item embeddings. To address this issue, we propose a sequential recommendation framework named TailRec that enables contextual information of tail item well-leveraged and greatly improves its corresponding representation. Given the characteristics of the sequential recommendation task, the surrounding interaction records of each tail item are regarded as contextual information without leveraging any additional side information. This approach allows for the mining of contextual information from cross-sequence behaviors to boost the performance of sequential recommendations. Such a light contextual filtering component is plug-and-play for a series of SRS models. To verify the effectiveness of the proposed TailRec, we conduct extensive experiments over several popular benchmark recommenders. The experimental results demonstrate that TailRec can greatly improve the recommendation results and speed up the training process. The codes of our methods have been available.

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用于顺序推荐的一般尾部项目表示增强框架
最近,深度学习模型的进步极大地促进了顺序推荐系统(SRS)的发展。然而,目前的深度模型结构在数据不足的情况下学习高质量嵌入的能力有限。同时,高度倾斜的长尾分布在推荐系统中非常常见。因此,在本文中,我们将重点放在增强尾部项目的表示上,以提高顺序推荐性能。通过对基准的实证研究,我们惊讶地发现,优化不佳的尾项嵌入会极大地阻碍排名性能和训练过程。为了解决这个问题,我们提出了一种名为 TailRec 的顺序推荐框架,它可以充分利用尾项的上下文信息,并大大改进其相应的表示。鉴于顺序推荐任务的特点,每个尾项的周边交互记录都被视为上下文信息,而无需利用任何额外的侧面信息。这种方法可以从跨序列行为中挖掘上下文信息,从而提高序列推荐的性能。这种轻型上下文过滤组件对于一系列 SRS 模型来说是即插即用的。为了验证所提出的 TailRec 的有效性,我们对几种流行的基准推荐器进行了广泛的实验。实验结果表明,TailRec 可以大大改善推荐结果,并加快训练过程。我们的方法代码已经完成。
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来源期刊
Frontiers of Computer Science
Frontiers of Computer Science COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
8.60
自引率
2.40%
发文量
799
审稿时长
6-12 weeks
期刊介绍: Frontiers of Computer Science aims to provide a forum for the publication of peer-reviewed papers to promote rapid communication and exchange between computer scientists. The journal publishes research papers and review articles in a wide range of topics, including: architecture, software, artificial intelligence, theoretical computer science, networks and communication, information systems, multimedia and graphics, information security, interdisciplinary, etc. The journal especially encourages papers from new emerging and multidisciplinary areas, as well as papers reflecting the international trends of research and development and on special topics reporting progress made by Chinese computer scientists.
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