Sirui Duan, Mengya Ouyang, Rong Wang, Qian Li, Yunpeng Xiao
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引用次数: 0
Abstract
In e-commerce recommendation systems, users’ long-term and short-term interests jointly influence product selection. However, the behavioral conformity phenomenon tends to be more prominent in short-term sequences, and the entanglement of true preference and popularity conformity data confuses the user’s real interest needs. To address this issue, we propose a sequential recommendation model called DFRec to disentangle short-term interests from popularity bias. By leveraging long-term interest trends, the model promotes the separation of short-term interests from popularity-driven deviations, thereby reducing the impact of popularity interference in short-term sequences. Firstly, we propose a Disentangled Frequency Attention Network(DFAN) to address the entanglement between real sequence features and conformity data in users’ short-term behavioral sequences. The approach clarify the non-entangled representation of the user’s short-term interest and conformity on the basis of long-term interest trends. Secondly, in order to capture the real long-term interest characteristics of users, this paper suggests using a Learnable Filter(LF) to filter the noise frequencies in long-term sequence. The method decouples the horizontal and vertical directions of the sequence and filters out the noise in both directions. Finally, consider the importance of the two interests characteristics is dynamic, we propose a joint learning framework with dual embeddings to balance and fusion these two features of users’ interests. Experimental results on three public datasets demonstrate that our model effectively captures dynamic user interests and outperforms six baseline models.
在电子商务推荐系统中,用户的长期利益和短期利益共同影响产品的选择。然而,行为从众现象往往在短期序列中更为突出,真实偏好和人气从众数据的纠缠混淆了用户的真实兴趣需求。为了解决这个问题,我们提出了一个称为DFRec的顺序推荐模型,以将短期利益与流行偏见分开。该模型通过利用长期利益趋势,促进了短期利益与人气驱动偏差的分离,从而降低了人气干扰对短期序列的影响。首先,我们提出了一种解纠缠频率注意网络(Disentangled Frequency Attention Network, DFAN)来解决用户短期行为序列中真实序列特征与一致性数据之间的纠缠问题。该方法在长期利益趋势的基础上阐明了用户短期利益和一致性的非纠缠表示。其次,为了捕捉用户真实的长期兴趣特征,本文建议使用可学习滤波器(LF)对长期序列中的噪声频率进行滤波。该方法对序列的水平方向和垂直方向进行解耦,并在两个方向上滤除噪声。最后,考虑到这两种兴趣特征的重要性是动态的,我们提出了一种双嵌入的联合学习框架来平衡和融合这两种用户兴趣特征。在三个公共数据集上的实验结果表明,我们的模型有效地捕获了动态用户兴趣,并且优于六个基线模型。
期刊介绍:
Information Processing and Management is dedicated to publishing cutting-edge original research at the convergence of computing and information science. Our scope encompasses theory, methods, and applications across various domains, including advertising, business, health, information science, information technology marketing, and social computing.
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