基于位置搜索的用户行为建模的三边时空注意网络

Yi Qi, Ke Hu, Bo Zhang, Jia Cheng, Jun Lei
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引用次数: 7

摘要

在基于位置的搜索中,用户的点击行为自然地与三边时空信息绑定在一起,即历史用户请求的位置、相应点击项的位置和历史点击发生的时间。适当的三边时空用户点击行为序列建模是任何基于位置的搜索服务成功的关键。现有的用户行为建模方法虽然丰富且有用,但由于忽略了请求的地理信息、项目的地理信息和点击时间三者之间的相互作用,对三边时空序列中丰富的模式建模存在不足。本文系统地研究了基于位置的搜索中的用户行为建模问题。TRISAN是三边时空注意网络(Trilateral Spatiotemporal Attention Network)的缩写,它是一种基于注意力的神经网络模型,通过融合机制将时间相关性融入到物品地理亲密度的建模和请求地理亲密度的建模中。此外,我们建议通过距离和语义相似度来建立地理接近度模型。大量的实验表明,所提出的方法大大优于现有的方法,并且我们的建模策略的每个部分都有助于其最终的成功。
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Trilateral Spatiotemporal Attention Network for User Behavior Modeling in Location-based Search
In location-based search, user's click behavior is naturally bonded with trilateral spatiotemporal information, i.e., the locations of historical user requests, the locations of corresponding clicked items and the occurring time of historical clicks. Appropriate modeling of the trilateral spatiotemporal user click behavior sequence is key to the success of any location-based search service. Though abundant and helpful, existing user behavior modeling methods are insufficient for modeling the rich patterns in trilateral spatiotemporal sequence in that they ignore the interplay among request's geo- graphic information, item's geographic information and the click time. In this work, we study the user behavior modeling problem in location-based search systematically. We propose TRISAN, short for Trilateral Spatiotemporal Attention Network, a novel attention- based neural model that incorporates temporal relatedness into both the modeling of item's geographic closeness and the modeling of request's geographic closeness through a fusion mechanism. In addition, we propose to model the geographic closeness both by distance and by semantic similarity. Extensive experiments demonstrate that the proposed method outperforms existing methods by a large margin and every part of our modeling strategy contributes to its final success.
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