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ToP: Time-dependent Zone-enhanced Points-of-interest Embedding-based Explainable Recommender system

机译:TOP:时间依赖的区域增强点的基于兴趣点嵌入的可解雇的推荐系统

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Points-of-interest (POIs) recommendation plays a vital role by introducing unexplored POIs to consumers and has drawn extensive attention from both academia and industry. Existing POI recommender systems usually learn latent vectors to represent both consumers and POIs from historical check-ins and make recommendations under the spatiotemporal constraints. However, we argue that the existing works still suffer from the challenges of explaining consumers complicated check-in actions. In this paper, we first explore the interpretability of recommendations from the POI aspect, i.e., for a specific POI, its function usually changes over time, so representing a POI with a single fixed latent vector is not sufficient to describe POIs dynamic function. Besides, check-in actions to a POI is also affected by the zone it belongs to. In other words, the zone’s embedding learned from POI distributions, road segments, and historical check-ins could be jointly utilized to enhance the accuracy of POI recommendations. Along this line, we propose a Time-dependent Zone-enhanced POI embedding model (ToP), a recommender system that integrates knowledge graph and topic model to introduce the spatiotemporal effects into POI embeddings for strengthening interpretability of recommendation. Specifically, ToP learns multiple latent vectors for a POI in different time to capture its dynamic functions. Jointly combining these vectors with zones representations, ToP enhances the spatiotemporal interpretability of POI recommendations. With this hybrid architecture, some existing POI recommender systems can be treated as special cases of ToP. Extensive experiments on real-world Changchun city datasets demonstrate that ToP not only achieves state-of-the-art performance in terms of common metrics, but also provides more insights for consumers POI check-in actions.
机译:兴趣点(POI)推荐通过向消费者引入未开发的POI,并从学术界和工业中汲取广泛的关注,这起到了重要作用。现有的POI推荐系统通常学习潜在的向量,以代表消费者和POI从历史检查,并在时空约束下提出建议。然而,我们认为现有的作品仍然遭受解释消费者复杂的登记行动的挑战。在本文中,我们首先探讨了从POI方面的推荐的解释性,即,对于特定的POI,其功能通常随时间变化,因此表示具有单个固定潜伏的POI不足以描述POIS动态功能。此外,对POI的登记行动也受其所属区域的影响。换句话说,可以共同利用来自POI分布,道路段,道路段和历史检查的区域的嵌入来提高POI建议的准确性。沿着这一行,我们提出了一个时间依赖的区域增强POI嵌入模型(TOP),推荐系统,集成了知识图形和主题模型,将时空效应引入POI EMBEDDINGS,以加强推荐的可解释性。具体而言,在不同的时间内为POI学习多个潜在的向量以捕获其动态功能。将这些向量与区域表示联合结合,增强了POI建议的时空可解释性。通过这种混合架构,一些现有的POI推荐系统可被视为顶部的特殊情况。在现实世界长春市数据集的广泛实验表明,最重要的是在普通指标方面不仅实现了最先进的绩效,而且还为消费者提供了更多的见解。

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