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Modelling Temporal Dynamics and Repeated Behaviors for Recommendation

机译:为推荐建模时间动态和重复行为

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Personalized recommendation has yield immense success in predicting user preference with heterogeneous implicit feedback (HIF), i.e., various user behaviors. However, existing studies consider less about the temporal dynamics and repeated patterns of HIF. They simply suppose: (1) a hard rule among user behaviors (e.g., add-to-cart must come before purchase and after view); (2) merge repeated behaviors into one (e.g., view several times is considered as view once only), thus failing to unveil user preferences from their real behaviors. To ease these issues, we, therefore, propose a novel end-to-end neural framework - TDRB, which automatically models the Temporal Dynamics and Repeated Behaviors to assist in capturing user preference, thus achieving more accurate recommendations. Empirical studies on three real-world datasets demonstrate the superiority of our proposed TDRB against other state-of-the-arts.
机译:个性化推荐在通过异构隐式反馈(HIF)(即各种用户行为)预测用户偏好方面取得了巨大成功。但是,现有研究较少考虑HIF的时间动态和重复模式。他们简单地假设:(1)用户行为中的硬性规定(例如,购物车必须在购买之前和查看之后出现); (2)将重复的行为合并为一个行为(例如,多次查看被视为仅一次查看),因此无法从用户的真实行为中揭露他们的偏好。因此,为缓解这些问题,我们提出了一种新颖的端到端神经框架-TDRB,该框架可自动对时间动态和重复行为进行建模,以帮助捕获用户的偏好,从而获得更准确的建议。对三个真实世界数据集的实证研究表明,我们提出的TDRB相对于其他最新技术具有优越性。

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