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Streaming Session-based Recommendation

机译:流媒体基于会话的推荐

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摘要

Session-based Recommendation (SR) is the task of recommending the next item based on previously recorded user interactions. In this work, we study SR in a practical streaming scenario, namely Streaming Session-based Recommendation (SSR), which is a more challenging task due to (1) the uncertainty of user behaviors, and (2) the continuous, large-volume, high-velocity nature of the session data. Recent studies address (1) by exploiting the attention mechanism in Recurrent Neural Network (RNN) to better model the user's current intent, which leads to promising improvements. However, the proposed attention models are based solely on the current session. Moreover, existing studies only perform SR under static offline settings and none of them explore (2). In this work, we target SSR and propose a Streaming Session based Recommendation Machine (SSRM) to tackle these two challenges. Specifically, to better understand the uncertainty of user behaviors, we propose a Matrix Factorization (MF) based attention model, which improves the commonly used attention mechanism by leveraging the user's historical interactions. To deal with the large-volume and high-velocity challenge, we introduce a reservoir-based streaming model where an active sampling strategy is proposed to improve the efficiency of model updating. We conduct extensive experiments on two real-world datasets. The experimental results demonstrate the superiority of the SSRM method compared to several state-of-the-art methods in terms of MRR and Recall.
机译:基于会话的建议(SR)是基于先前录制的用户交互推荐下一个项目的任务。在这项工作中,我们将SR学习在实际的流式场景中,即基于会话的基于会话的推荐(SSR),这是一个更具挑战性的任务,这是一个(1)用户行为的不确定性,(2)连续,大卷,会话数据的高速性质。最近的研究地址(1)通过利用经常性神经网络(RNN)的注意机制来更好地模拟用户目前的意图,这导致有希望的改进。然而,所提出的注意力模型仅基于当前会话。此外,现有研究仅在静态离线设置下执行SR,并且它们都不探索(2)。在这项工作中,我们针对SSR并提出基于流式的推荐机(SSRM)来解决这两个挑战。具体而言,为了更好地了解用户行为的不确定性,我们提出了一种基于矩阵分子(MF)的注意模型,这通过利用用户的历史交互来提高常用的注意机制。为了处理大批量和高速挑战,我们介绍了基于水库的流式媒体模型,其中提出了有源采样策略来提高模型更新的效率。我们对两个现实世界数据集进行了广泛的实验。实验结果表明,与MRR和召回的几种最先进的方法相比,SSRM方法的优越性。

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