Text mining public feedback on urban densification plan change in Hamilton, New Zealand

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES
Xinyu Fu, Catherine Brinkley, Thomas W Sanchez, Chaosu Li
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引用次数: 0

Abstract

Cities worldwide are commonly aspiring to transition from inefficient urban sprawl patterns to more compact and sustainable urban forms. However, urban densification efforts often face significant public resistance or skepticism, hindering at-scale implementation. There is a scarcity of empirical studies identifying the rationale and mechanisms underpinning public opposition to urban density. This study aims to bridge this gap by leveraging novel natural language processing techniques (NLP), combined with mixed-methods analysis of a unique, highly detailed public dataset on urban intensification in Hamilton. This research stands out by proposing a transferable model for rapidly generating insights from large public feedback datasets, and also unveils the polarized and complex, self-interest-driven mechanisms, including NIMBYism (Not In My Back Yard), behind public support or opposition to urban densification. NLP techniques, such as sentiment analysis, topic modeling, and ChatGPT, can be used to offer rapid insights into a large, unstructured public feedback dataset. When combined with submitters’ individual interest representation and identifies, these AI-generated summaries can offer important insights into the hidden rationales behind public opinions, and, more importantly, be used to design tailored public engagement activities to obtain community buy-in.
新西兰汉密尔顿城市密集化计划变更的公众反馈文本挖掘
世界各地的城市普遍希望从低效的城市扩张模式过渡到更加紧凑和可持续的城市形态。然而,城市密集化的努力往往面临公众的强烈抵制或怀疑,阻碍了大规模的实施。目前还缺乏实证研究来确定公众反对城市密度的理由和机制。本研究旨在利用新颖的自然语言处理技术(NLP),结合对汉密尔顿独特的、高度详细的城市集约化公共数据集的混合方法分析,弥补这一空白。这项研究的突出之处在于,它提出了一种从大型公众反馈数据集中快速生成洞察力的可转移模型,并揭示了公众支持或反对城市密集化背后的两极分化和复杂的自我利益驱动机制,包括 NIMBYism(不在我家后院)。情感分析、主题建模和 ChatGPT 等 NLP 技术可用于快速洞察大型、非结构化的公众反馈数据集。当与提交者的个人兴趣表述和识别相结合时,这些人工智能生成的摘要就能为了解公众意见背后隐藏的理由提供重要见解,更重要的是,还能用于设计量身定制的公众参与活动,以获得社区的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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