Side information fusion for sequential recommendation (SR) aims to effectively leverage various side information to enhance the performance of next-item prediction. Most state-of-the-art methods build on self-attention networks and focus on exploring various solutions to integrate the item embedding and side information embeddings before the attention layer. However, our analysis shows that the early integration of various types of embeddings limits the expressiveness of attention matrices due to a rank bottleneck and constrains the flexibility of gradients. Also, it involves mixed correlations among the different heterogeneous information resources, which brings extra disturbance to attention calculation. Motivated by this, we propose Decoupled Side Information Fusion for Sequential Recommendation (DIF-SR), which moves the side information from the input to the attention layer and decouples the attention calculation of various side information and item representation. We theoretically and empirically show that the proposed solution allows higher-rank attention matrices and flexible gradients to enhance the modeling capacity of side information fusion. Also, auxiliary attribute predictors are proposed to further activate the beneficial interaction between side information and item representation learning. Extensive experiments on four real-world datasets demonstrate that our proposed solution stably outperforms state-of-the-art SR models. Further studies show that our proposed solution can be readily incorporated into current attention-based SR models and significantly boost performance. Our source code is available at https://github.com/AIM-SE/DIF-SR.
翻译:与顺序建议(SR)相融合的侧面信息旨在有效地利用各种侧面信息,提高下项预测的性能。大多数最新方法以自控网络为基础,侧重于探索各种解决方案,将项目嵌入和侧面信息嵌入到注意层之前;然而,我们的分析表明,由于各种类型的嵌入层的早期整合限制了关注矩阵的清晰度,因为一个等级的瓶颈限制了关注矩阵,并限制了梯度的灵活性。此外,它还涉及不同种类的信息资源之间的关联性,从而引起额外的干扰,从而引起人们注意计算。为此,我们提议采用脱couped的侧边端信息融合以落实顺序建议(DIF-SR),将侧端信息从输入到注意层,并去除对各种侧端信息和项目代表的注意的计算。我们从理论上和从经验上看,拟议的解决办法允许更高的关注矩阵和灵活的梯度,以加强侧端信息聚合的建模能力。此外,还提议建立辅助属性预测器,以进一步激活侧边端信息和项目之间的有益互动。我们提议的SHI-A级A级建议(DI-SR)系列建议(DIF-IF-SR)建议的快速化解决方案在四种实际数据模型中进行广泛的实验,以展示我们现有的现有数据模型中可以展示。