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Embedding Geographic Locations for Modelling the Natural Environment Using Flickr Tags and Structured Data

机译:嵌入地理位置以使用Flickr标签和结构化数据对自然环境建模

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Meta-data from photo-sharing websites such as Flickr can be used to obtain rich bag-of-words descriptions of geographic locations, which have proven valuable, among others, for modelling and predicting ecological features. One important insight from previous work is that the descriptions obtained from Flickr tend to be complementary to the structured information that is available from traditional scientific resources. To better integrate these two diverse sources of information, in this paper we consider a method for learning vector space embeddings of geographic locations. We show experimentally that this method improves on existing approaches, especially in cases where structured information is available.
机译:来自照片共享网站(例如Flickr)的元数据可用于获取丰富的地理位置的词袋描述,事实证明,这些描述对于建模和预测生态特征非常有价值。先前工作的一个重要见解是,从Flickr获得的描述往往是对可从传统科学资源获得的结构化信息的补充。为了更好地整合这两种不同的信息源,在本文中,我们考虑了一种学习地理位置向量空间嵌入的方法。我们通过实验表明,该方法对现有方法进行了改进,尤其是在可获得结构化信息的情况下。

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