The need for evaluation models capable of returning ‘slender’ and reliable mass appraisals of properties belonging to different market segments has been made mandatory by the events that are covering the global real estate finance, because of the emergence of non-performing loans in the banks’ balance sheets. In Italy, the non-performing loans have been estimated by the Italian Banking Association equal to about 300 billion euro in 2014. In the present paper, three approaches of data-driven techniques (hedonic price model, artificial neural networks and evolutionary polynomial regression) have been applied to a sample of residential apartments recently sold in a district of the city of Bari (Italy), in order to test the respective performance for mass appraisals. The models obtained by the implementation of the three procedures have been compared in terms of statistical accuracy, empirical compliance of the results and complexity of the functional relationships.

Data-driven techniques for mass appraisals. Applications to the residential market of the city of Bari (Italy) / Tajani, Francesco; Morano, Pierluigi; Locurcio, Marco; Torre, Carmelo Maria. - In: INTERNATIONAL JOURNAL OF BUSINESS INTELLIGENCE AND DATA MINING. - ISSN 1743-8195. - ELETTRONICO. - 2:11(2016), pp. 109-129.

Data-driven techniques for mass appraisals. Applications to the residential market of the city of Bari (Italy)

TAJANI, FRANCESCO
Primo
;
MORANO, PIERLUIGI;LOCURCIO, MARCO;
2016

Abstract

The need for evaluation models capable of returning ‘slender’ and reliable mass appraisals of properties belonging to different market segments has been made mandatory by the events that are covering the global real estate finance, because of the emergence of non-performing loans in the banks’ balance sheets. In Italy, the non-performing loans have been estimated by the Italian Banking Association equal to about 300 billion euro in 2014. In the present paper, three approaches of data-driven techniques (hedonic price model, artificial neural networks and evolutionary polynomial regression) have been applied to a sample of residential apartments recently sold in a district of the city of Bari (Italy), in order to test the respective performance for mass appraisals. The models obtained by the implementation of the three procedures have been compared in terms of statistical accuracy, empirical compliance of the results and complexity of the functional relationships.
2016
data-driven techniques; hedonic price model; artificial neural networks; ANN; evolutionary polynomial regression; market value; mass appraisal
01 Pubblicazione su rivista::01a Articolo in rivista
Data-driven techniques for mass appraisals. Applications to the residential market of the city of Bari (Italy) / Tajani, Francesco; Morano, Pierluigi; Locurcio, Marco; Torre, Carmelo Maria. - In: INTERNATIONAL JOURNAL OF BUSINESS INTELLIGENCE AND DATA MINING. - ISSN 1743-8195. - ELETTRONICO. - 2:11(2016), pp. 109-129.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/935173
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