Assessment of potential tenants and decision support systems: from systematic literature review to future research guidelines
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Date
2025Author
Skačkauskienė, Ilona
Bytautė, Sigita
Leonavičiūtė, Virginija
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With increasing competition in the rental market, landlords and real estate professionals must make informed
commercial real estate (CRE) tenant selection decisions. Traditional evaluation methods, such as credit checks
and rental history analysis, often lack comprehensiveness. This study examines the applicability of decision support
systems (DSS) for tenant assessment through a systematic literature review (2020–2024). By integrating data analytics,
machine learning, and advanced decision-making tools, DSS can offer a structured, data-driven approach to improving
assessment accuracy. The findings reveal key trends, research gaps, and DSS’s evolving role in increasing decision-making
objectivity. Additionally, the study explores managerial implications, including ethical concerns, data integration
challenges, and the impact of emerging technologies.
Issue date (year)
2025Author
Skačkauskienė, IlonaThe following license files are associated with this item:

