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A Review of the Application of Artificial Intelligence Technology in the Evaluation and Processing of Real Estate
DOI: https://doi.org/10.62381/ACS.FSSD2025.12
Author(s)
Xingyu Chen
Affiliation(s)
University of Macau, University Avenue, Taipa, Macao, China
Abstract
In the case of the full development of China's real estate market until saturation, problems such as the increase in the number of houses and the difficulty in targeted treatment of houses have emerged. The rapid development of AI technology provides an answer to this problem. In order to fully explore the possible role and impact of artificial intelligence technology on current problems, this paper selects a number of papers related to artificial intelligence and real estate at home and abroad, and analyzes the substantive impact of artificial intelligence on different aspects. The final conclusion shows that artificial intelligence, as a rapidly developing and increasingly mature tool, plays an important role in the targeted valuation of different types of houses, life cycle and remaining life assessment, structural safety assessment, repair and renovation recommendations, etc.
Keywords
Real Estate; Artificial Intelligence; Development Trends
References
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