Scenario-aware and Mutual-based approach for Multi-scenario Recommendation in E-Commerce

Yuting Chen, Yanshi Wang, Yabo Ni, Anxiang Zeng, Lanfen Lin
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引用次数: 13

Abstract

Recommender systems (RSs) are essential for e-commerce platforms to help meet the enormous needs of users. How to capture user interests and make accurate recommendations for users in heterogeneous e-commerce scenarios is still a continuous research topic. However, most existing studies overlook the intrinsic association of the scenarios: the log data collected from platforms can be naturally divided into different scenarios (e.g., country, city, culture). We observed that the scenarios are heterogeneous because of the huge differences among them. Therefore, a unified model is difficult to effectively capture complex correlations (e.g., differences and similarities) between multiple scenarios thus seriously reducing the accuracy of recommendation results. In this paper, we target the problem of multi-scenario recommendation in e-commerce, and propose a novel recommendation model named Scenario-aware Mutual Learning (SAML) that leverages the differences and similarities between multiple scenarios. We first introduce scenario-aware feature representation, which transforms the embedding and attention modules to map the features into both global and scenario-specific subspace in parallel. Then we introduce an auxiliary network to model the shared knowledge across all scenarios, and use a multi-branch network to model differences among specific scenarios. Finally, we employ a novel mutual unit to adaptively learn the similarity between various scenarios and incorporate it into multi-branch network. We conduct extensive experiments on both public and industrial datasets, empirical results show that SAML consistently and significantly outperforms state-of-the-art methods.
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基于场景感知的电子商务多场景推荐方法
推荐系统(RSs)对于电子商务平台来说是必不可少的,可以帮助满足用户的巨大需求。如何在异构电商场景下捕捉用户兴趣,为用户提供精准推荐,仍然是一个持续研究的课题。然而,现有的研究大多忽略了场景之间的内在关联:从平台收集的日志数据可以自然地划分为不同的场景(如国家、城市、文化)。我们观察到,由于它们之间的巨大差异,这些场景是异质的。因此,一个统一的模型很难有效地捕捉多个场景之间复杂的相关性(如差异性和相似性),从而严重降低了推荐结果的准确性。本文针对电子商务中的多场景推荐问题,提出了一种基于场景感知的互学习(SAML)推荐模型,该模型利用多场景之间的异同。我们首先引入场景感知特征表示,它转换嵌入和关注模块,将特征并行映射到全局和场景特定的子空间。然后引入辅助网络对所有场景的共享知识进行建模,并使用多分支网络对特定场景之间的差异进行建模。最后,我们采用一种新的互单元自适应学习不同场景之间的相似性,并将其整合到多分支网络中。我们在公共和工业数据集上进行了广泛的实验,实证结果表明SAML始终显著优于最先进的方法。
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