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CaSe4SR: Using category sequence graph to augment session-based recommendation

机译:SIALS4SR:使用类别序列图来增强基于会话的推荐

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Session-based recommendation aims to predict next item based on users' anonymous behavior sequence within a short time. Recent studies focus on modeling sequential dependencies or complex relations among items in a session via recurrent/convolutional/graph neural networks. However, the following problems still remain: for short sessions, limited interactions cannot manifest user's intent clearly; for long sessions, user's interest may drift but be blurred by complex transitions. Motivated by the observation that different items are often belong to only a few categories or that closely related, in this article, we tackle these challenges by leveraging item category information, which is a concise form of knowledge and readily available in many platforms. We propose a novel method CaSe4SR that utilizes category sequence graph to augment session-based recommendation. In CaSe4SR, we build an item graph and a category graph, from user behavior sequence and item category sequence. The latter summarizes the former at concept level, which reduces item-level user behavior noises and makes user's interest clearer. Afterwards, graph neural networks are applied on item graph and category graph respectively to learn representations of items and categories. Then two alternative fusion strategies and attention mechanism are designed to integrate them, yielding global embedding of the session, which is further combined with representation of last item to get ultimate session representation. Extensive experiments on real-world datasets show that CaSe4SR outperforms other state-of-the-art methods consistently. Detailed analysis reveals that category sequence graph is beneficial for next-item recommendation in sessions with different lengths. (C) 2020 Elsevier B.V. All rights reserved.
机译:基于会话的建议旨在在短时间内根据用户的匿名行为序列预测下一个项目。最近的研究侧重于通过反复/卷积/图形神经网络在会话中的项目中的顺序依赖性或复杂关系建模。但是,以下问题仍然存在:对于短暂的会话,有限的互动不能明确表达用户的意图;对于长期会话,用户的兴趣可能会漂移,但通过复杂的转换模糊。在本文中,不同的物品通常属于少数几个类别或密切相关的观察,我们通过利用项目类别信息来解决这些挑战,这是一种简洁的知识形式,在许多平台上容易获得。我们提出了一种新的方法案例4SR,它利用类别序列图来增强基于会话的推荐。在Suist4SR中,我们从用户行为序列和项目类别序列构建项目图形和类别图表。后者在概念级别总结了前者,这减少了项目级用户行为噪声并使用户的兴趣更清晰。之后,图形神经网络分别应用于项目图和类别图,以了解项目和类别的表示。然后,两个替代的融合策略和注意机制旨在集成它们,产生全局嵌入会话,这与最后一个项目的表示进一步结合以获得最终会话表示。关于现实世界数据集的广泛实验表明,案例4SR始终始终始终如一。详细分析显示,类别序列图对具有不同长度的会话中的下一个项目推荐有益。 (c)2020 Elsevier B.v.保留所有权利。

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