2022
DOI: 10.1111/gean.12350
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A Hybrid Approach for Mass Valuation of Residential Properties through Geographic Information Systems and Machine Learning Integration

Abstract: Geographic Information Systems (GIS) and Machine Learning methods are now widely used in mass property valuation using the physical attributes of properties. However, locational criteria, such as as proximity to important places, sea or forest views, flat topography are just some of the spatial factors that affect property values and, to date, these have been insufficiently used as part of the valuation process. In this study, a hybrid approach is developed by integrating GIS and Machine Learning for mass valu… Show more

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Cited by 7 publications
(7 citation statements)
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“…One of the key applications of AI in sustainable real estate development lies in property valuation and is strongly connected with Automated Valuation Modeling (AVM), Mass Appraisal (MA), or computer-assisted Mass Appraisal (CAMA) [37,38]. The simultaneous utilization of Geographic Information Systems and machine learning for that purpose has also been thoroughly investigated in [39] and found its application. AI-driven algorithms adeptly analyze a multidimensional variable describing market trends.…”
Section: Ai-driven Algorithms In Real Estate Industry Solution Analysismentioning
confidence: 99%
“…One of the key applications of AI in sustainable real estate development lies in property valuation and is strongly connected with Automated Valuation Modeling (AVM), Mass Appraisal (MA), or computer-assisted Mass Appraisal (CAMA) [37,38]. The simultaneous utilization of Geographic Information Systems and machine learning for that purpose has also been thoroughly investigated in [39] and found its application. AI-driven algorithms adeptly analyze a multidimensional variable describing market trends.…”
Section: Ai-driven Algorithms In Real Estate Industry Solution Analysismentioning
confidence: 99%
“…Regarding the literature review, the proximity to places of employment or essential places (e.g. shopping malls, mass transit stations, and utilities) significantly influences housing projects in a specific location (Acheampong, 2018;Khan et al, 2017;Mete & Yomralioglu, 2022). In this study, therefore, two groups of factors were used to determine the characteristics of the locations:…”
Section: Location Factorsmentioning
confidence: 99%
“…With the increase of public and open-source geospatial data GISs, machine learning methods can be improved. Mete and Yomralioglu [15] used open data sources from the European Environment Agency, OpenStreetMap, and Ordnance Survey to perform a mass assessment of residential properties in England and Wales using a hybrid approach combining GISs and machine learning regression algorithms. In this study, the results of different regression methods were compared and the random forest algorithm was found to have higher accuracy than other algorithms.…”
Section: Artificial Intelligencementioning
confidence: 99%
“…For example, some researchers have investigated various methods to automate the valuation process by combining geospatial methods with mathematical methods based on fuzzy logic [6][7][8][9], interpolation [10,11], or statistical methods. Other researchers have studied the combination of GIS with artificial intelligence, neural networks [12][13][14], or machine learning [15]. Another automatic evaluation method studied is the combination of the hedonic model with spatial analysis based on GIS [16,17].…”
mentioning
confidence: 99%
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