Seeing economic development like a large language model. A methodological approach to the exploration of geographical imaginaries in generative AI

IF 3.4 2区 社会学 Q1 GEOGRAPHY Geoforum Pub Date : 2024-11-28 DOI:10.1016/j.geoforum.2024.104175
Boris Michel, Yannick Ecker
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Abstract

The recent hype surrounding the disruptive potential of AI technologies in the form of large language models or text to image generators also raises questions for geographical research and practice. These questions include the power relations and inequalities inscribed in these systems, their significance for work and labor relations, their ecological and economic impact, but also the geographical and spatial imaginaries they reproduce. This article focuses on the latter and formulates a series of theoretical and methodological considerations for dealing with the output of these systems. As we assume that outputs generated by large language models will play an increasing role in the future, both in public and media discourses as well as in the discourses and practices of spatial planning and economic policy making, we consider it important to gain a critical understanding of these socio-technical systems. The empirical object of investigation of this paper is generated output that deals with questions of regional development and economic challenges in three European regions that are currently particularly affected by the transition to a climate-neutral economy and are designated by the European Union as Just Transition Fund Territories. We are particularly interested in how geographical imaginaries about these regions are formulated, how economic and social problems of these regions are presented and how this is translated into planning advice and development plans.
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把经济发展看成是一个大的语言模型。一种探索生成人工智能中地理想象的方法论方法
最近围绕人工智能技术以大型语言模型或文本到图像生成器的形式具有颠覆性潜力的炒作也为地理研究和实践提出了问题。这些问题包括这些系统中铭刻的权力关系和不平等,它们对工作和劳资关系的意义,它们的生态和经济影响,以及它们所再现的地理和空间想象。本文的重点是后者,并为处理这些系统的输出制定了一系列理论和方法上的考虑。由于我们假设大型语言模型产生的输出将在未来发挥越来越大的作用,无论是在公共和媒体话语中,还是在空间规划和经济政策制定的话语和实践中,我们认为对这些社会技术系统有一个批判性的理解是很重要的。本文的实证研究对象是产生的产出,涉及三个欧洲地区的区域发展和经济挑战问题,这些地区目前特别受向气候中性经济过渡的影响,并被欧盟指定为公正过渡基金领土。我们特别感兴趣的是这些地区的地理想象是如何形成的,这些地区的经济和社会问题是如何呈现的,以及如何将其转化为规划建议和发展计划。
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来源期刊
Geoforum
Geoforum GEOGRAPHY-
CiteScore
7.30
自引率
5.70%
发文量
201
期刊介绍: Geoforum is an international, inter-disciplinary journal, global in outlook, and integrative in approach. The broad focus of Geoforum is the organisation of economic, political, social and environmental systems through space and over time. Areas of study range from the analysis of the global political economy and environment, through national systems of regulation and governance, to urban and regional development, local economic and urban planning and resources management. The journal also includes a Critical Review section which features critical assessments of research in all the above areas.
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