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Personalized Recommendations of Locally Interesting Venues to Tourists via Cross-Region Community Matching

机译:通过跨区域社区匹配向游客提供本地有趣地点的个性化推荐

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摘要

You are in a new city. You are not familiar with the places and neighborhoods. You want to know all about the exciting sights, food outlets, and cultural venues that the locals frequent, in particular those that suit your personal interests. Even though there exist many mapping, local search, and travel assistance sites, they mostly provide popular and famous listings such as Statue of Liberty and Eiffel Tower, which are well-known places but may not suit your personal needs or interests. Therefore, there is a gap between what tourists want and what dominant tourism resources are providing. In this work, we seek to provide a solution to bridge this gap by exploiting the rich user-generated location contents in location-based social networks in order to offer tourists the most relevant and personalized local venue recommendations. In particular, we first propose a novel Bayesian approach to extract the social dimensions of people at different geographical regions to capture their latent local interests. We next mine the local interest communities in each geographical region. We then represent each local community using aggregated behaviors of community members. Finally, we correlate communities across different regions and generate venue recommendations to tourists via cross-region community matching. We have sampled a representative subset of check-ins from Foursquare and experimentally verified the effectiveness of our proposed approaches.
机译:你在一个新城市。您不熟悉这些地方和社区。您想了解所有当地人常去的令人兴奋的景点,美食场所和文化场所,尤其是那些符合您的个人兴趣的景点。尽管存在许多地图,本地搜索和旅行帮助网站,但它们大多提供受欢迎和著名的清单,例如自由女神像和埃菲尔铁塔,这些都是著名的地方,但可能不适合您的个人需求或兴趣。因此,游客的需求与所提供的主要旅游资源之间存在差距。在这项工作中,我们力求提供一种解决方案,通过利用基于位置的社交网络中丰富的用户生成的位置内容来弥合这种差距,从而为游客提供最相关和个性化的本地场所推荐。特别是,我们首先提出一种新颖的贝叶斯方法,以提取不同地理区域的人们的社会维度,以捕捉其潜在的当地利益。接下来,我们挖掘每个地理区域中的本地兴趣社区。然后,我们使用社区成员的汇总行为代表每​​个本地社区。最后,我们将不同区域的社区相关联,并通过跨区域社区匹配为游客生成会场推荐。我们从Foursquare抽取了代表性的签入子集,并通过实验验证了我们提出的方法的有效性。

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