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Exploring the Context of Locations for Personalized Location Recommendations

机译:探索个性化位置建议的地点的背景

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Conventional location recommendation models rely on users' visit history, geographical influence, temporal influence, etc., to infer users' preferences for locations. However, systematically modeling a location's context (i.e., the set of locations visited before or after this location) is relatively unexplored. In this paper, by leveraging the Skipgram model, we learn the latent representation for a location to capture the influence of its context. A pair-wise ranking loss that considers the confidences of observed user preferences for locations is then proposed to learn users' latent representations for personalized top-N location recommendations. Moreover, we also extend our model by taking into account temporal influence. Stochastic gradient descent based optimization algorithms are developed to fit the models. We conduct comprehensive experiments over four real datasets. Experimental results demonstrate that our approach significantly outperforms the state-of-the-art location recommendation methods.
机译:传统的位置推荐模型依赖于用户的访问历史,地理影响,时间影响等,以推断用户对位置的偏好。但是,系统地建模位置的上下文(即,在此位置之前或之后访问的一组位置)相对未探索。在本文中,通过利用跳板模型,我们学习潜在的代表,以捕捉其上下文的影响。然后,提出了考虑观察到的位置的用户偏好的信心的一对排名损失,以学习用户的个性化TOP-N位置建议的潜在表示。此外,我们还通过考虑到时间影响来扩展我们的模型。开发了随机梯度下降基于血清的优化算法以适合模型。我们在四个真实数据集中进行全面的实验。实验结果表明,我们的方法显着优于最先进的位置推荐方法。

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