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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

Authors
Chang, Sun WooRhee, Deuk YoungJun, Han Jong
Issue Date
Jul-2022
Publisher
TAYLOR & FRANCIS LTD
Keywords
Natural language processing; sentiment classification; deep learning; long short-term memory networks; building performance evaluation; post occupancy evaluation
Citation
ARCHITECTURAL SCIENCE REVIEW, v.65, no.4, pp 278 - 294
Pages
17
Indexed
AHCI
SCOPUS
Journal Title
ARCHITECTURAL SCIENCE REVIEW
Volume
65
Number
4
Start Page
278
End Page
294
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/211085
DOI
10.1080/00038628.2022.2050180
ISSN
0003-8628
1758-9622
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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