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POEM: Position Order Enhanced Model for Session-based Recommendation Service

机译:诗:基于会话的推荐服务的位置订单增强模型

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Session-based recommendation, which aims to predict the next action of an anonymous user base on the interaction information in a session, plays a crucial role in many online services. Recent works solve the problem with the latest deep learning techniques and have achieved good performance on some datasets. However, they have some shortcomings that affect their practical application value: a) the drift process of users' interests in the browsing is not well explored; b) the association between a user's current interests and general preferences in the session is not adequately considered. They mostly assume that the last interaction has a significant impact on the next interaction, which makes them work well only in limited scenarios and specific datasets. To address these limitations, we propose a session-based recommendation model called POEM, which explicitly considers the impact of interaction order relationships on recommendations by emphasizing position attributes in the session. Specifically, POEM models the macro and micro importance of each item in the session, the influence of user interaction order on the item-level collaboration, and the session-level collaboration reflected in the user interest drift process, respectively. Extensive experiments of the effectiveness, efficiency, and universality on three real-world datasets show that our method outperforms various state-of-the-art session-based recommendation methods consistently.
机译:基于会话的推荐,旨在预测匿名用户基于会话中的交互信息的下一个操作,在许多在线服务中起着至关重要的作用。最近的作品解决了最新的深度学习技巧问题,在某些数据集中实现了良好的性能。然而,他们有一些影响他们实际应用价值的缺点:a)用户在浏览中的利益的漂移过程并不熟悉; b)未充分考虑用户当前兴趣与会话中的常规偏好之间的关联。它们主要假设最后一个互动对下一个互动产生了重大影响,这使得它们仅在有限的场景和特定数据集中工作。为了解决这些限制,我们提出了一个被称为诗歌的基于会议的推荐模式,该模型通过强调会话中的位置属性,明确地考虑了互动订单关系对建议的影响。具体而言,POEM模拟了会话中每个项目的宏观和微观值,用户交互顺序对项目级协作的影响,以及用户兴趣漂移过程中反映的会话级协作。在三个现实世界数据集中的有效性,效率和普遍性的广泛实验表明,我们的方法始终始终优于各种最先进的会议推荐方法。

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