Discover Overlapping Topical Regions by Geo-Semantic Clustering of Tweets

Yuta Taniguchi, Daiki Monzen, Lutfiana Sari Ariestien, Daisuke Ikeda
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引用次数: 3

Abstract

Geotagging is an interesting feature of social media services which adds metadata of geographical locations to photos, web sites or messages. From a different perspective, geotagging can be seen as annotating geographical locations conversely by images or texts. It is a challenging task to summarize such annotations and uncover topical geographical regions characterized by specific topics locally since such knowledge is useful for location-based advertising and so on. Determining topical regions is not trivial since topical region's topic and geographical area are dependent on each other. In this paper, we aim to discover overlapping topical regions from geotagged text messages (tweets) collected from Twitter. To this end, we employ Mean Shift clustering algorithm and an integrated vector space of a geographic and semantic vector spaces. Running Mean Shift algorithm on the vector space, we can evaluate both geographical density and semantic density of tweets simultaneously. Subsequently, our method determines regions of clusters detected by Mean Shift algorithm applying the kernel density estimation on clustered tweets in the geographical space. Our experiments show clusters get broken into several sub-clusters that overlap each other when we increase the weight of semantic density over that of geographical density.
通过推文的地理语义聚类发现重叠的主题区域
地理标签是社交媒体服务的一个有趣功能,它可以将地理位置的元数据添加到照片、网站或消息中。从另一个角度来看,地理标记可以看作是用图像或文本反过来注释地理位置。总结这些注释并揭示局部特定主题特征的主题地理区域是一项具有挑战性的任务,因为这些知识对基于位置的广告等有用。确定主题区域并非易事,因为主题区域的主题与地理区域是相互依赖的。在本文中,我们的目标是从Twitter收集的地理标记文本消息(tweet)中发现重叠的主题区域。为此,我们采用Mean Shift聚类算法和地理向量空间和语义向量空间的集成向量空间。在向量空间上运行Mean Shift算法,可以同时评估推文的地理密度和语义密度。随后,我们的方法在地理空间中对聚类推文进行核密度估计,确定Mean Shift算法检测到的聚类区域。我们的实验表明,当我们在地理密度的基础上增加语义密度的权重时,聚类会被分解成几个相互重叠的子聚类。
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