The paper presents an application of multi-criteria evaluation developed to select the most significant property characteristics of a real estate portfolio. The selected characteristics are utilized within a multi-parameter model to estimate the most probable market value of a large public property portfolio owned by the Bank of Italy. The multi-criteria evaluation is based on the involvement of some key actors of the decision process. The goal is overcoming the difficulties presented by econometric models due to the scarcity of a large sample real estate data. The application has shown that the selection and weighting of real estate characteristics allows the development of a reliable mass appraisal without the need for large amounts of data necessary for the application of regression models.

Valutazione multicriterio e stime di massa: un’applicazione ad un patrimonio immobiliare pubblico

Leopoldo Sdino;P. Rosasco;A. Oppio;F. Torrieri
2018-01-01

Abstract

The paper presents an application of multi-criteria evaluation developed to select the most significant property characteristics of a real estate portfolio. The selected characteristics are utilized within a multi-parameter model to estimate the most probable market value of a large public property portfolio owned by the Bank of Italy. The multi-criteria evaluation is based on the involvement of some key actors of the decision process. The goal is overcoming the difficulties presented by econometric models due to the scarcity of a large sample real estate data. The application has shown that the selection and weighting of real estate characteristics allows the development of a reliable mass appraisal without the need for large amounts of data necessary for the application of regression models.
2018
Mass Appraisal, Multicriteria Evaluation, Real Estate Value, Real Estate Characteristics.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1071083
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