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Defining and Predicting the Localness of Volunteered Geographic Information using Ground Truth Data

机译:使用地面真理数据定义和预测志愿地理信息的本地性

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Many applications of geotagged content are predicated on the concept of localness (e.g., local restaurant recommendation, mining social media for local perspectives on an issue). However, definitions of who is a "local" in a given area are typically informal and ad-hoc and, as a result, approaches for localness assessment that have been used in the past have not been formally validated. In this paper, we begin the process of addressing these gaps in the literature. Specifically, we (1) formalize definitions of "local" using themes identified in a 30-paper literature review, (2) develop the first ground truth localness dataset consisting of 132 Twitter users and 58,945 place-tagged tweets, and (3) use this dataset to evaluate existing localness assessment approaches. Our results provide important methodological guidance to the large body of research and practice that depends on the concept of localness and suggest means by which localness assessment can be improved.
机译:地理标记内容的许多应用都是基于本地性的概念(例如,当地餐厅推荐,在问题上为当地观众挖掘社交媒体)。 然而,谁是给定区域中的“本地”的定义通常是非正式的和临时的,因此,过去使用的本地性评估的方法尚未正式验证。 在本文中,我们开始解决文献中这些差距的过程。 具体而言,我们(1)使用30篇文献中审查中确定的主题形式化“本地”的定义,(2)开发由132个Twitter用户和58,945个Place标记的推文组成的第一个地面真实性数据集,(3)使用 此数据集可评估现有的本地性评估方法。 我们的结果为大量的研究和实践提供了重要的方法论,这取决于本地性的概念,并提出了可以改善本地性评估的意思。

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