时序推荐的多时间嵌入与GLU集成

Xingyao Yang, Yansong Liu, Yu Jiong, Ziyang Li
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引用次数: 0

摘要

自关注在顺序推荐领域取得了很大的进展。传统的基于注意力的顺序推荐模型通常采用位置嵌入或简单的时间嵌入,难以利用用户的时间信息获取用户长期和短期兴趣之间的变化,使得用户兴趣信息来源单一、不足。为解决上述问题,提出了将多时序特征嵌入和门控线性前馈网络相结合的自关注顺序推荐算法。采用带门控线性单元(GLU)的前馈神经网络,更好地优化变压器模型在顺序推荐中的作用,采用多时间标签嵌入方法,充分获取用户兴趣随时间的变化趋势,提高推荐的准确性。在多个数据集上的实验表明,与传统模型相比,我们更好地解决了这些问题,提高了模型的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of Multiple Time Embedding and GLU for Sequential Recommendation
Self-attention has made great progress in the field of sequential recommendation. The traditional attention-based sequential recommendation model usually adopts position embedding or simple time embedding, which is difficult to use the user’s time information to obtain the changes between the long-term and short-term interests of users, which makes the sources of user interest information single and insufficient. In order to solve the above problems, the self-attention sequential recommendation algorithm is proposed, which combines with multiple timing characteristic embedding and gated linear feed-forward network. The feed-forward neural network with gated linear units (GLU) is used to better optimize the role of transformer model in sequential recommendation, and multiple time tag embedding methods are used to fully obtain the changing trend of user interest over time, so as to improve the accuracy of recommendation. Experiments on multiple datasets indicate that we solve the problems better and improve the predictive performance of the model compared with the traditional model.
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