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Reading the city through its neighbourhoods: Deep text embeddings of Yelp reviews as a basis for determining similarity and change

机译:通过其邻近阅读城市:Yelp审查的深文本嵌入为确定相似性和变革的基础

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This paper develops novel methods for using Yelp reviews as a window into the collective representations of a city and its neighbourhoods. Basing analysis on social media data such as Yelp is a challenging task because review data is highly sparse and direct analysis may fail to uncover hidden trends. To this end, we propose a deep autoencoder approach for embedding the language of neighbourhood-based business reviews into a reduced dimensional space that facilitates similarity comparison of neighbourhoods and their change over time. Our model improves performance in distinguishing real and fake neighbourhood descriptions derived from real reviews, increasing performance in the task from an average accuracy of 0.46 to 0.77. This improvement in performance indicates that this novel application of embedded language analysis permits us to uncover comparative trends in neighbourhood change through the lens of their venues' reviews, providing a computational methodology for reading a city through its neighbourhoods. The resulting toolkit makes it possible to examine a city's current sociological trends in terms of its neighbourhoods' collective identities.
机译:本文开发了使用Yelp审查的新方法作为城市及其社区集体表示的窗口。基于yelp等社交媒体数据的基础分析是一个具有挑战性的任务,因为审查数据是高度稀疏的,直接分析可能无法揭示隐藏趋势。为此,我们提出了一种深度自动化的方法,可以将基于邻域的业务评审的语言嵌入到减少尺寸空间的缩小空间,这有助于邻域的相似性和随时间的变化。我们的模型在区分真实和假社区描述中的性能提高了实际评论的实际和假社区描述,从平均准确度提高了任务的性能0.46到0.77。这种性能的改善表明,这种新颖的嵌入式语言分析应用允许我们通过场地评论的镜头揭示邻里变化的比较趋势,为通过其社区阅读城市来提供计算方法。由此产生的工具包使其可以在其社区集体身份方面检查一个城市的当前社会学趋势。

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