Affiliation
Hong Kong Shue Yan UniversityRajamangala University of Technology Tawan-Ok
Jinke Property Group Co., Ltd.
Oxford University
University of Bedfordshire
Shanxi University
European University Cyprus
Issue Date
2022-07-06Subjects
machine learningcarpark
car park
repeat sales index
AutoML
Hong Kong
natural language processing
tokenization
Subject Categories::G760 Machine Learning
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The aims of this study were threefold: 1) study the research gap in carpark and price index via big data and natural language processing, 2) examine the research gap of carpark indices, and 3) construct carpark price indices via repeat sales methods and predict carpark indices via the AutoML. By researching the keyword “carpark” in Google Scholar, the largest electronic academic database that coversWeb of Science and Scopus indexed articles, this study obtained 999 articles and book chapters from 1910 to 2019. It confirmed that most carpark research threw light on multi-storey carparks, management and ventilation systems, and reinforced concrete carparks. The most common research method was case studies. Regarding price index research, many previous studies focused on consumer, stock, press and futures, with many keywords being related to finance and economics. These indicated that there is no research predicting carpark price indices based on an AutoML approach. This study constructed repeat sales indices for 18 districts in Hong Kong by using 34,562 carpark transaction records from December 2009 to June 2019.Wanchai’s carpark price was about four times that of Yuen Long’s carpark price, indicating the considerable carpark price differences in Hong Kong. This research evidenced the features that affected the carpark price indices models most: gold price ranked the first in all 19 models; oil price or Link stock price ranked second depending on the district, and carpark affordability ranked third.Citation
Li RYM, Song L, Li B, Crabbe MJC, Yue XG (2022) 'Predicting carpark prices indices in Hong Kong using AutoML', Computer Modeling in Engineering & Sciences, 134 (3), pp.2247 -2282.Publisher
Tech Science PressAdditional Links
https://www.techscience.com/CMES/online/detail/18747Type
ArticleLanguage
enISSN
1526-1492EISSN
1526-1506Sponsors
N/Aae974a485f413a2113503eed53cd6c53
10.32604/cmes.2022.020930
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Except where otherwise noted, this item's license is described as Attribution-NonCommercial-NoDerivatives 4.0 International