Linsey Pang, Amir Hossein Raffiee, Wei Liu, Keld Lundgaard
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引用次数: 0
摘要
顺序推荐模型利用自我关注机制实现了最先进的性能。后来人们发现,除了使用项目 ID 和位置嵌入之外,在预测下一个项目时还能显著提高准确率。在最近的文献中,有报道称多维内核嵌入与时间上下文内核相结合可以捕捉用户的不同行为模式,从而大幅提高性能。在本研究中,我们通过引入混合注意力机制和层向噪声注入(LNI)正则化,进一步提高了顺序推荐模型的鲁棒性和泛化能力。我们将提出的模型称为自适应鲁棒顺序推荐框架(ADRRec),并通过大量实验证明我们的模型优于现有的自我关注架构。
Sequential Recommendation via Adaptive Robust Attention with Multi-dimensional Embeddings
Sequential recommendation models have achieved state-of-the-art performance
using self-attention mechanism. It has since been found that moving beyond only
using item ID and positional embeddings leads to a significant accuracy boost
when predicting the next item. In recent literature, it was reported that a
multi-dimensional kernel embedding with temporal contextual kernels to capture
users' diverse behavioral patterns results in a substantial performance
improvement. In this study, we further improve the sequential recommender
model's robustness and generalization by introducing a mix-attention mechanism
with a layer-wise noise injection (LNI) regularization. We refer to our
proposed model as adaptive robust sequential recommendation framework (ADRRec),
and demonstrate through extensive experiments that our model outperforms
existing self-attention architectures.