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A time-aware spatio-textual recommender system

机译:时间感知的时空文本推荐系统

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摘要

Location-Based Social Networks (LBSNs) allow users to post ratings and reviews and to notify friends of these posts. Several models have been proposed for Point-of-Interest (POI) recommendation that use explicit (i.e. ratings, comments) or implicit (i.e. statistical scores, views, and user influence) information. However the models so far fail to capture sufficiently user preferences as they change spatially and temporally. We argue that time is a crucial factor because user check-in behavior might be periodic and time dependent, e.g. check-in near work in the mornings and check-in close to home in the evenings. In this paper, we present two novel unified models that provide review and POI recommendations and consider simultaneously the spatial, textual and temporal factors. In particular, the first model provides review recommendations by incorporating into the same unified framework the spatial influence of the users' reviews and the textual influence of the reviews. The second model provides POI recommendations by combining the spatial influence of the users' check-in history and the social influence of the users' reviews into another unified framework. Furthermore, for both models we consider the temporal dimension and measure the impact of time on various time intervals. We evaluate the performance of our models against 10 other methods in terms of precision and recall. The results indicate that our models outperform the other methods. (C) 2017 Elsevier Ltd. All rights reserved.
机译:基于位置的社交网络(LBSN)允许用户发布评分和评论,并将这些帖子通知朋友。针对兴趣点(POI)推荐提出了几种模型,这些模型使用了显式(即评级,评论)或隐式(即统计分数,视图和用户影响)信息。但是,到目前为止,由于模型在空间和时间上发生变化,因此无法充分捕捉用户的偏好。我们认为时间是至关重要的因素,因为用户签到行为可能是周期性的且与时间有关,例如早上在工作地点附近办理登机手续,晚上在家附近办理登机手续。在本文中,我们提出了两个新颖的统一模型,它们提供了评论和POI建议,并同时考虑了空间,文本和时间因素。特别地,第一种模型通过将用户评论的空间影响和评论的文本影响合并到同一统一框架中来提供评论建议。第二个模型通过将用户签到历史的空间影响力和用户评论的社会影响力组合到另一个统一框架中来提供POI建议。此外,对于这两个模型,我们都考虑了时间维度,并测量了时间对各种时间间隔的影响。我们根据精度和召回率与其他10种方法评估模型的性能。结果表明,我们的模型优于其他方法。 (C)2017 Elsevier Ltd.保留所有权利。

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