Events Describe Places: Tagging Places with Event Based Social Network Data

Vinod Hegde, A. Mileo, A. Pozdnoukhov
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引用次数: 2

Abstract

Location based services and Geospatial web applications have become popular in recent years due to wide adoption of mobile devices. Search and recommendation of places or Points of Interests (PoIs) are prominent services available on them. The effectiveness of these services crucially depends on the availability of tags that are descriptive of places. The major geospatial databases that contain data about places suffer from the lack of descriptive tags for places, since writing them is a time-consuming process and only a few users do it despite having knowledge about places. In order to tackle this issue and automatically generate descriptive tags for places, we propose a solution that utilizes data about a set of events that happen in a specific place and use it to extract meaningful descriptive tags for that place. We use data about events held at places on Meetup, a well known event based social network and apply Latent Dirichlet Allocation (LDA) to derive sets of probable descriptive tags for any place. In order to evaluate our approach, we measure semantic relatedness between tags derived for places on Meetup and manually assigned tags from Foursquare, a location based service. Results show that event data can be used to derive semantically relevant place tags. This shows that location based services can benefit from capturing data about events to derive place tags.
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事件描述地点:用基于事件的社会网络数据标记地点
近年来,由于移动设备的广泛采用,基于位置的服务和地理空间web应用程序变得流行起来。搜索和推荐地点或兴趣点(PoIs)是他们提供的突出服务。这些服务的有效性在很大程度上取决于描述地点的标签的可用性。包含有关地点的数据的主要地理空间数据库缺乏地点的描述性标记,因为编写它们是一个耗时的过程,而且只有少数用户会这样做,尽管他们对地点有所了解。为了解决这个问题并自动为地点生成描述性标记,我们提出了一种解决方案,该解决方案利用在特定地点发生的一组事件的数据,并使用它为该地点提取有意义的描述性标记。我们使用在Meetup(一个著名的基于事件的社交网络)上举行的事件的数据,并应用潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)来为任何地点派生可能的描述性标签集。为了评估我们的方法,我们测量了来自Meetup的地点标签和来自Foursquare(一个基于位置的服务)的手动分配标签之间的语义相关性。结果表明,事件数据可以用于派生语义相关的位置标签。这表明,基于位置的服务可以从捕获事件数据以派生位置标记中获益。
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