Towards a study of everyday geographic information: Bringing the everyday into view

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES Environment and Planning B: Urban Analytics and City Science Pub Date : 2023-12-05 DOI:10.1177/23998083231217606
Stefano De Sabbata, Katy Bennett, Zoe Gardner
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Abstract

Events are the driving force behind social media, whether we try to create them or keep up with them. A wide range of studies has focused on how content from social media can be used to detect, model and predict events and identify key topics of discussion. At the same time, very limited attention has been given so far to the quantitative study of the everyday, which has fascinated qualitative human geography research in the past few decades. That is partly due to the lack of a formal definition of what constitutes the everyday. In this paper, we aim to advance our understanding of the everyday, not by reducing it to any kind of definition but by bringing it into view through a quantitative analysis. We hypothesise that the by-products of current methods focused on event detection might be used to quantitatively explore everyday geographies as represented through Twitter data. We consider the use of both statistical approaches based on term frequency and state-of-the-art large language models, and we conduct a case study on content posted on Twitter and geolocated in the city of Leicester. Our paper makes two key advances for research concerned with the everyday and the analysis of geographic information. First, we illustrate how large language models combined with spatial analysis and visualisation can foster the study of everyday geographies, providing an insight into the still elusive concept of the everyday, representing what other approaches to the everyday have struggled to qualify. Secondly, we showcase the potential held by large language models and visual analytics in democratising sophisticated natural language processing and thus providing new tools for research in human geography.
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研究日常地理信息:将日常纳入视野
事件是社交媒体背后的驱动力,无论我们是试图创造事件还是跟上事件的发展。广泛的研究集中在如何利用社交媒体的内容来检测、建模和预测事件,并确定讨论的关键话题。与此同时,对日常生活的定量研究迄今为止受到的关注非常有限,这在过去几十年里吸引了定性人文地理研究。这在一定程度上是由于缺乏对日常构成的正式定义。在本文中,我们的目标是推进我们对日常的理解,不是通过将其减少到任何一种定义,而是通过定量分析将其带入视野。我们假设,当前专注于事件检测的方法的副产品可能用于定量地探索通过Twitter数据表示的日常地理。我们考虑使用基于术语频率的统计方法和最先进的大型语言模型,并对Twitter上发布的内容和位于莱斯特市的内容进行了案例研究。本文在地理信息日常研究和地理信息分析两方面取得了重要进展。首先,我们说明了结合空间分析和可视化的大型语言模型如何促进日常地理的研究,提供了对仍然难以捉摸的日常概念的洞察,代表了其他日常方法难以达到的标准。其次,我们展示了大型语言模型和视觉分析在使复杂的自然语言处理民主化方面所具有的潜力,从而为人文地理学的研究提供了新的工具。
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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