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Deep learning-based natural language sentiment classification model for recognizing users' sentiments toward residential space

Title
Deep learning-based natural language sentiment classification model for recognizing users' sentiments toward residential space
Author
전한종
Keywords
Natural language processing; sentiment classification; deep learning; building performance evaluation; long short-term memory networks; Google TensorFlow; Keras
Issue Date
2021-09
Publisher
TAYLOR & FRANCIS LTD
Citation
ARCHITECTURAL SCIENCE REVIEW, v. 64, NO. 5, Page. 410-421
Abstract
Recent developments in real estate brokerage platforms have enabled residents to provide subjective reviews, which have immense value as subjective assessments and suggestions for architects. This study suggests a deep-learning-based natural language sentiment classification model to analyse reviews. Morpheme analysis and word embedding for 'KoNLPy' and 'Word2vec' were structured for pre-processing, and a long short-term memory network was used to process review data. Total 5974 review data were used in this study. Among the various active online platforms for real estate brokerage, platforms that provide online users with the ability to write reviews of their living spaces were crawled. The review data were classified as 'positive' or 'negative' by label and as 'Apartment' or 'Non-Apartment' by housing type. The model developed in this study is expected to increase in value as more online platforms appear in the future and the volume of natural language data generated by those platforms increases.
URI
https://www.tandfonline.com/doi/full/10.1080/00038628.2020.1748562https://repository.hanyang.ac.kr/handle/20.500.11754/177130
ISSN
0003-8628;1758-9622
DOI
10.1080/00038628.2020.1748562
Appears in Collections:
COLLEGE OF ENGINEERING[S](공과대학) > ARCHITECTURE(건축학부) > Articles
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