A natural language processing framework for collecting, analyzing, and visualizing users’ sentiment on the built environment: case implementation of New York City and Seoul residences

IF 1.8 3区 艺术学 0 ARCHITECTURE Architectural Science Review Pub Date : 2022-03-22 DOI:10.1080/00038628.2022.2050180
Sunwoo Chang, D. Rhee, Han Jong Jun
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Abstract

This study suggests a natural language processing framework for collecting, analyzing, and, visualizing online natural language data, consisting of a web crawler for data collection, tokenizer for text preprocessing, Word2vec for word embedding, and deep-learning long short-term memory networks for sentiment classification. The framework was exemplified on online brokerage platforms in New York City and Seoul. The visualized framework-driven results showed regional similarities and differences between the cities. The proposed approach provides a way to gather big data, not through surveys or interviews. The framework-driven analysis may provide descriptive precursors to explore how laypersons experience built environments and city spaces.
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一种用于收集、分析和可视化用户对建筑环境的情感的自然语言处理框架——以纽约市和首尔住宅为例
本研究提出了一个用于收集、分析和可视化在线自然语言数据的自然语言处理框架,包括用于数据收集的网络爬虫、用于文本预处理的标记器、用于单词嵌入的Word2vec和用于情绪分类的深度学习长短期记忆网络。该框架在纽约市和首尔的在线经纪平台上得到了体现。可视化框架驱动的结果显示了城市之间的区域相似性和差异性。拟议的方法提供了一种收集大数据的方式,而不是通过调查或采访。框架驱动的分析可以为探索外行如何体验建筑环境和城市空间提供描述性的前兆。
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来源期刊
CiteScore
4.80
自引率
8.70%
发文量
34
期刊介绍: Founded at the University of Sydney in 1958 by Professor Henry Cowan to promote continued professional development, Architectural Science Review presents a balanced collection of papers on a wide range of topics. From its first issue over 50 years ago the journal documents the profession’s interest in environmental issues, covering topics such as thermal comfort, lighting, and sustainable architecture, contributing to this extensive field of knowledge by seeking papers from a broad geographical area. The journal is supported by an international editorial advisory board of the leading international academics and its reputation has increased globally with individual and institutional subscribers and contributors from around the world. As a result, Architectural Science Review continues to be recognised as not only one of the first, but the leading journal devoted to architectural science, technology and the built environment. Architectural Science Review publishes original research papers, shorter research notes, and abstracts of PhD dissertations and theses in all areas of architectural science including: -building science and technology -environmental sustainability -structures and materials -audio and acoustics -illumination -thermal systems -building physics -building services -building climatology -building economics -ergonomics -history and theory of architectural science -the social sciences of architecture
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