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公众对城市再生的情绪分析:基于情感知识增强预训练和潜在狄利克雷分配的大规模数据研究。

Public sentiment analysis on urban regeneration: A massive data study based on sentiment knowledge enhanced pre-training and latent Dirichlet allocation.

机构信息

School of Management Science and Real Estate, Chongqing University, Chongqing, China.

School of Geography and Ecotourism, Southwest Forestry University, Yunnan, China.

出版信息

PLoS One. 2023 Apr 27;18(4):e0285175. doi: 10.1371/journal.pone.0285175. eCollection 2023.

DOI:10.1371/journal.pone.0285175
PMID:37104499
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10138235/
Abstract

BACKGROUND

Public satisfaction is the ultimate goal and an important determinant of China's urban regeneration plan. This study is the first to use massive data to perform sentiment analysis of public comments on China's urban regeneration.

METHODS

Public comments from social media, online forums, and government affairs platforms are analyzed by a combination of Natural Language Processing, Knowledge Enhanced Pre-Training, Word Cloud, and Latent Dirichlet Allocation.

RESULTS

(1) Public sentiment tendency toward China's urban regeneration was generally positive but spatiotemporal divergences were observed; (2) Temporally, public sentiment was most negative in 2020, but most positive in 2021. It has remained consistently negative in 2022, particularly after February 2022; (3) Spatially, at the provincial level, Guangdong posted the most comments and Tibet, Shanghai, Guizhou, Chongqing, and Hong Kong are provinces with highly positive sentiment. At the national level, the east and south coastal, southwestern, and western China regions are more positive, as opposed to the northeast, central, and northwest regions; (4) Topics related to Shenzhen's renovations, development of China's urban regeneration and complaints from residents are validly categorized and become the public's key focus. Accordingly, governments should address spatiotemporal disparities and concerns of local residents for future development of urban regeneration.

摘要

背景

公众满意度是中国城市更新计划的最终目标和重要决定因素。本研究首次利用大数据对公众对中国城市更新的评论进行情感分析。

方法

通过自然语言处理、知识增强预训练、词云、潜在狄利克雷分配相结合,对社交媒体、在线论坛和政务平台上的公众评论进行分析。

结果

(1)公众对中国城市更新的总体态度倾向是积极的,但存在时空差异;(2)从时间上看,公众情绪在 2020 年最为消极,但在 2021 年最为积极。2022 年以来,公众情绪一直保持负面,特别是 2022 年 2 月以后;(3)从空间上看,在省级层面,广东发表的评论最多,而西藏、上海、贵州、重庆和香港则是情绪最为积极的地区。在全国层面,东部和南部沿海、西南部和西部地区较为积极,而东北部、中部和西北部地区则较为消极;(4)与深圳改造、中国城市更新发展和居民投诉相关的话题得到了有效分类,成为公众关注的焦点。因此,政府应解决时空差异和当地居民的关切,为未来城市更新的发展做好准备。

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