Time Interval Aware Self-Attention for Sequential Recommendation

Jiacheng Li, Yujie Wang, Julian McAuley
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引用次数: 348

Abstract

Sequential recommender systems seek to exploit the order of users' interactions, in order to predict their next action based on the context of what they have done recently. Traditionally, Markov Chains(MCs), and more recently Recurrent Neural Networks (RNNs) and Self Attention (SA) have proliferated due to their ability to capture the dynamics of sequential patterns. However a simplifying assumption made by most of these models is to regard interaction histories as ordered sequences, without regard for the time intervals between each interaction (i.e., they model the time-order but not the actual timestamp). In this paper, we seek to explicitly model the timestamps of interactions within a sequential modeling framework to explore the influence of different time intervals on next item prediction. We propose TiSASRec (Time Interval aware Self-attention based sequential recommendation), which models both the absolute positions of items as well as the time intervals between them in a sequence. Extensive empirical studies show the features of TiSASRec under different settings and compare the performance of self-attention with different positional encodings. Furthermore, experimental results show that our method outperforms various state-of-the-art sequential models on both sparse and dense datasets and different evaluation metrics.
时序推荐的时间间隔感知自注意
顺序推荐系统试图利用用户交互的顺序,以便根据他们最近所做的事情来预测他们的下一步行动。传统上,马尔可夫链(MCs),以及最近的循环神经网络(rnn)和自我注意(SA)由于能够捕捉序列模式的动态而得到了广泛的应用。然而,这些模型中的大多数都做了一个简化的假设,即将交互历史视为有序序列,而不考虑每次交互之间的时间间隔(即,它们建模的是时间顺序,而不是实际的时间戳)。在本文中,我们试图在顺序建模框架内明确建模交互的时间戳,以探索不同时间间隔对下一个项目预测的影响。我们提出了TiSASRec(基于时间间隔感知的自注意顺序推荐),它既对项目的绝对位置建模,也对它们在序列中的时间间隔建模。大量的实证研究显示了TiSASRec在不同设置下的特征,并比较了不同位置编码下的自注意表现。此外,实验结果表明,我们的方法在稀疏和密集数据集以及不同的评估指标上都优于各种最先进的序列模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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