Genetic algorithm application for real estate market analysis in the uncertainty conditions

Every real estate investment decision making, because of the high capital-intensive character of properties, requires careful analysis of information. Availability of the information, market specificity and unpredictable or sudden changes on it cause that all real estate investments are subject to c...

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Veröffentlicht in:Journal of housing and the built environment 2021-12, Vol.36 (4), p.1629-1670
Hauptverfasser: Renigier-Biłozor, Małgorzata, Chmielewska, Aneta, Walacik, Marek, Janowski, Artur, Lepkova, Natalija
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container_issue 4
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container_title Journal of housing and the built environment
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creator Renigier-Biłozor, Małgorzata
Chmielewska, Aneta
Walacik, Marek
Janowski, Artur
Lepkova, Natalija
description Every real estate investment decision making, because of the high capital-intensive character of properties, requires careful analysis of information. Availability of the information, market specificity and unpredictable or sudden changes on it cause that all real estate investments are subject to considerable risk and uncertainty. This specificity causes that, one can never be sure, that the collected set of information is complete though reliable for decision inference. The process of property market information collection, from numerical point of view is infinite since the information can be continuously supplemented or clarified. That is the reason for alternative to commonly (classically) used methods search that are effective in the selection of closest solutions optimal for multidimensional real functions, taking into account the global maximum. The paper attempts to decrease the impact of the factors that cause uncertainty on the quality of real estate investment decisions through the tools based on the simulation of the process of natural selection and biological evolution application proposal. The aim of the study is to analyse the potential of the methodology based on genetic algorithms (GA) as part of the automated valuation models component in the uncertainty conditions and support investment decisions on the real estate market. The developed hybrid model (based on genetic algorithm and Hellwig’s method compound) allows to select properties adequate to the adopted assumptions, i.e. individuals best suited to the environment. The tool can be used by real estate investment advisors and potential investors.
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subjects Algorithms
Biological evolution
Data collection
Decision analysis
Decision making
Evolution
Genetic algorithms
Geography
Human Geography
Information processing
Investments
Landscape/Regional and Urban Planning
Market analysis
Natural selection
Real estate
Simulation
Social Sciences
Uncertainty
Valuation
title Genetic algorithm application for real estate market analysis in the uncertainty conditions
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