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TLSAN: Time-aware long-and short-term attention network for next-item recommendation

机译:TLSAN:时间感知的下一个项目推荐的长期关注网络

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摘要

Recently, deep neural networks are widely applied in recommender systems for their effectiveness in capturing/modeling users & rsquo; preferences. Especially, the attention mechanism in deep learning enables recommender systems to incorporate various features in an adaptive way. Specifically, as for the next item recommendation task, we have the following three observations: 1) users & rsquo; sequential behavior records aggregate at time positions (& ldquo;time-aggregation & rdquo;), 2) users have personalized taste that is related to the & ldquo;time-aggregation & rdquo; phenomenon (& ldquo;personalized time-aggregation & rdquo;), and 3) users & rsquo; short-term interests play an important role in the next item prediction/recommendation. In this paper, we propose a new Time-aware Long-and Short-term Attention Network (TLSAN) to address those observations mentioned above. Specifically, TLSAN consists of two main components. Firstly, TLSAN models & ldquo;personalized time aggregation & rdquo; and learn user-specific temporal taste via trainable personalized time position embeddings with category-aware correlations in long-term behaviors. Secondly, long-and short-term feature-wise attention layers are proposed to effectively capture users & rsquo; long-and short-term preferences for accurate recommendation. Especially, the attention mechanism enables TLSAN to utilize users & rsquo; preferences in an adaptive way, and its usage in long-and short-term layers enhances TLSAN & rsquo;s ability of dealing with sparse interaction data. Extensive experiments are conducted on Amazon datasets from different fields (also with different size), and the results show that TLSAN outperforms state-of-the-art baselines in both capturing users & rsquo; preferences and performing time-sensitive next-item recommendation.& nbsp; (c) 2021 Elsevier B.V. All rights reserved.
机译:最近,深度神经网络广泛应用于推荐系统,以实现捕获/建模用户&rsquo的有效性;喜好。特别是,深度学习的注意机制使得推荐系统以自适应方式结合各种特征。具体而言,至于下一个项目推荐任务,我们有以下三个观察:1)用户’顺序行为在时间位置记录聚合(“时间聚合和rdquo;),2)用户具有与&ldquo有关的个性化的味道;时间聚合和rdquo;现象(“个性化时间汇聚”)和3)用户’短期利益在下一个项目预测/推荐中发挥着重要作用。在本文中,我们提出了一个新的时光,长期关注网络(TLSAN)来解决上述这些观察结果。具体而言,TLSAN由两个主要组件组成。首先,TLSAN Models&Ldquo;个性化时间聚合和rdquo;并通过培训个性化时间位置嵌入具有可感知的个性化的个性化时间位置嵌入用户特定的时间味道,以长期行为中的类别感知相关性。其次,提出了长期和短期的特征注意层,以有效地捕获用户和rsquo;用于准确推荐的长期和短期偏好。特别是,注意机制使TLSAN能够利用用户和rsquo;以自适应方式的偏好,并且其在长期和短期层中的用法增强了TLSAN和RSQUO; S处理稀疏交互数据的能力。广泛的实验是在来自不同领域的亚马逊数据集(也具有不同的大小),结果表明,TLSAN占据了捕获用户和rsquo的最先进的基线;首选项和执行时间敏感的下一项推荐。  (c)2021 Elsevier B.V.保留所有权利。

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