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Adaptive landmark recommendations for travel planning: Personalizing and clustering landmarks using geo-tagged social media

机译:针对旅行计划的自适应地标建议:使用带有地理标签的社交媒体对地标进行个性化和聚类

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When travelers plan trips, landmark recommendation systems that consider the trip properties will conveniently aid travelers in determining the locations they will visit. Because interesting locations may vary based on the traveler and the situation, it is important to personalize the landmark recommendations by considering the traveler and the trip. In this paper, we propose an approach that adaptively recommends clusters of landmarks using geo-tagged social media. We first examine the impact of a trip's spatial and temporal properties on the distribution of popular places through large-scale data analyses. In our approach, we compute the significance of landmarks for travelers based on their trip's spatial and temporal properties. Next, we generate clusters of landmark recommendations, which have similar themes or are contiguous, using travel trajectory histories. Landmark recommendation performances based on our approach are evaluated against several baseline approaches. Our approach results in increased accuracy and satisfaction compared with the baseline approaches. Through a user study, we also verify that our approach is applicable to lesser-known places and reflects local events as well as seasonal changes. (C) 2014 Elsevier B.V. All rights reserved.
机译:当旅行者计划旅行时,考虑旅行属性的地标推荐系统将方便地帮助旅行者确定他们将要去的位置。由于有趣的位置可能会根据旅行者和情况而有所不同,因此重要的是通过考虑旅行者和旅程来个性化地标性建议。在本文中,我们提出了一种使用带有地理标签的社交媒体来自适应地推荐地标群集的方法。我们首先通过大规模数据分析来考察旅行的时空特性对热门地点分布的影响。在我们的方法中,我们根据旅行者的旅程的时空特性来计算其对地标的意义。接下来,我们使用旅行轨迹的历史记录来生成具有相似主题或连续主题的地标性推荐。我们根据几种基准方法对具有里程碑意义的推荐效果进行了评估。与基线方法相比,我们的方法可提高准确性和满意度。通过用户研究,我们还验证了我们的方法适用于鲜为人知的地方,并反映了本地事件以及季节性变化。 (C)2014 Elsevier B.V.保留所有权利。

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