An Automatic Tool for the Determination of Housing Rental Prices: An Analysis of the Italian Context
Abstract
:1. Introduction
2. Aim of the Study
3. Background
4. Case Study
Variables
5. Methodology
Application of the Methodology
6. Results Interpretation
7. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Variable | Acronym | Typology | Description | Measurement Unit |
---|---|---|---|---|
Rental prices | Rp | Cardinal | Housing rental prices | €/m2 per month |
Internal area | Ai | Cardinal | The internal area of the property (gross floor area) | m2 |
Surface of balconies | Ab | Cardinal | The surface of private external areas of balconies, terraces, and patios (gross floor area) | m2 |
Surface of green areas | Ag | Cardinal | The surface of private external space of gardens, green areas etc. (gross floor area) | m2 |
Condominium areas | Ae | Dummy | The presence of condominium areas to be used by the housing complex residents | 1: presence, 0: absence |
Floor | L | Cardinal | The floor on which the property is located | Number |
Bathroom | W | Cardinal | The number of bathrooms in the property | Number |
Kitchen | K | Dummy | The presence of the kitchen located in the living room of the property (the value “one” verifies this situation, whereas the value “zero” indicates that the kitchen and the living room are in two different home spaces separated by internal walls and doors) | 1: presence, 0: absence |
Property maintenance conditions | Cp | Dummy | The quality of the property maintenance conditions is considered a qualitative variable and is differentiated, through a synthetic evaluation, by three categories: “bad or to be restructured”, “good”, and “excellent”. Each of the three categories denotes different qualities and conditions: the “to be restructured” condition (Cp) indicates residential properties for which substantial restructuring interventions are necessary,; the “good” state (Cg) indicates houses that are immediately usable and in which the maintenance conditions are acceptable; and the “excellent” state (Ce) refers to properties characterized by high aesthetic and structural values with superior trimmings and architectural qualities | 1: category that defines the specific quality of each property, 0: the remaining two categories |
Cg | ||||
Ce | ||||
EPC label | Eab | Dummy | The EPC label, expressed, according to the current regulations, through the denominations from A4 (the highest level) to G (the lowest level). The EPC labels are gathered in three categories: from A4 to B (Eab); from C to E (Ecde); and F and G (Efg). If the property EPC level is F or G, both the variables Eab and Ecde are equal to a “zero” score | 1: EPC label of the property, 0: if not |
Ecde | ||||
Efg | ||||
Age of the building | Uc | Cardinal | The age of the building in which the residential unit is located, calculated as the difference between the year 2019 and the year of construction of the building | Number |
Subway | Dm | Cardinal | The distance from the nearest subway | Kilometers by walking |
Central train station | Ds | Cardinal | The distance from the central train station | Kilometers by walking |
University center | Du | Cardinal | The distance from the nearest university center | Kilometers by walking |
Central pole | Dp | Cardinal | The distance from the central pole (Dp) of each city. This is defined as a historical or religious monument located in the center of the city or a relevant square from which the main arterial roads develop; for this study, the “Duomo”, “Piazza Castello”, “Altare della Patria”, “Castel Nuovo”, “Maschio Angioino” and “Piazza del Duomo”, for the cities of Milan, Turin, Rome, Naples, and Catania, respectively, have been considered | Kilometers by walking |
Urban green space | Dg | Cardinal | The distance from the nearest urban green space | Kilometers by walking |
Municipal trade area | Fc | Dummy | The municipal trade area in which the property is located, considering the geographical distribution developed by the Italian Revenue Agency [55]. This synthetizes the different location characteristics (extrinsic factors) that affect the formation of the rental prices because it represents an urban area where the features are similar and, therefore, have homogeneously contributed to the local real estate market prices. In particular, four trade areas are included in the analysis among those defined by the Italian Revenue Agency: “central” (Fc), “semi-central” (Fsc), “peripheral” (Fp), and “suburban” (Fsb) | 1: if the property belongs to the specific trade area, 0: if not |
City | Equation |
---|---|
MILAN | Y = +0.74039 * Fc + 0.65355 * W0.5 Fp0.5 + 0.85473 * W0.5 * Fsc2 + 11.8431 * Ae0.5 * Uc * Dp0.5 * Du * Fsc0.5 + 0.91529 * Ab * L0.5 * Ce0.5 + 3.1017 * Ai0.5 − 2.0858 * Ai0.5 * L0.5 * Dp + 2.5784 * Ai * L0.5 * Ce0.5 * Eab2 + 5.2917 |
TURIN | Y = + 0.20484 * Fc + 0.20638 * Ce + 2.3667 * Ai0.5 − 0.90861 * Ai0.5 * Dp0.5 * Du0.5 + 3.1746 * Ai0.5 * Eab0.5 * Du * C + 0.79503 * Ai0.5 * Ae0.5 Cg * Du + 4.2823 * Ai *Ag0.5 * W0.5 * Dm + 5.1051 |
ROME | Y = −0.95769 * Dp0.5 + 0.32292 * Ce2 * Dm0.5 + 0.72193 * W2 + 8.6191 * L * Ecde * Fsc + 0.58693 * Ab0.5 * Fc2 + 2.4715 * Ai0.5 + 6.3407 |
NAPLES | Y = −0.65252 * Dg + 0.79149 * W2 Fsc2 + 0.72862 * L * Uc + 1.5006 * Ai0.5 + 0.96063* Ai0.5 * Ds0.5 * Fc0.5 + 5.7416 |
CATANIA | Y = + 2.9701 * Eab0.5 * Ds * Dm2 + 0.11784 * Ce0.5 + 0.57677 * W2 + 4.2099 * L0.5 * Uc * Fc0.5 + 3.3906 * Ab0.5 * K * Du2 + 0.73513 * Ag2 + 1.5162 * Ai0.5 − 13.4711 * Ai0.5 * Uc0.5 * Ds * Dm + 5.5681 |
MILAN | TURIN | ROME | NAPLES | CATANIA | |
---|---|---|---|---|---|
Internal area | ◉ | ◉ | ◉ | ◉ | ◉ |
Surface area of balconies | ◉ | ◉ | ◉ | ||
Surface area of green areas | ◉ | ◉ | |||
Condominium areas | ◉ | ◉ | |||
Floor | ◉ | ◉ | ◉ | ◉ | |
Bathroom | ◉ | ◉ | ◉ | ◉ | ◉ |
Kitchen | ◉ | ||||
Bad quality of property maintenance conditions | |||||
Good quality of property maintenance conditions | ◉ | ||||
Excellent quality of property maintenance conditions | ◉ | ◉ | ◉ | ◉ | |
EPC labels from A4 to B | ◉ | ◉ | ◉ | ||
EPC labels from C to E | ◉ | ||||
Age of the building | ◉ | ◉ | ◉ | ||
Subway | ◉ | ◉ | ◉ | ||
Central train station | ◉ | ◉ | |||
University center | ◉ | ◉ | ◉ | ||
Central pole | ◉ | ◉ | ◉ | ||
Urban green spaces | ◉ | ||||
Property location in the central municipal trade area | ◉ | ◉ | ◉ | ◉ | ◉ |
Property location in the semi-central municipal trade area | ◉ | ◉ | ◉ | ||
Property location in the peripheral municipal trade area | ◉ |
City | Variable | Functional Relationship Typology | Average Contribution on Rental Price [%] |
---|---|---|---|
MILAN | Internal area | DIRECT | +39% |
Surface are of balconies | DIRECT | +4% | |
Condominium areas | DIRECT | +19% | |
Floor | DIRECT | +3% | |
Bathroom | DIRECT | +20% | |
Excellent quality of the property maintenance conditions | DIRECT | +32% | |
EPC labels from A4 to B | DIRECT | +30% | |
Age of the building | DIRECT | +17% | |
Distance from the nearest university centre | DIRECT | +7% | |
Property location in the central municipal trade area | DIRECT (from Fp to Fc) | +37% | |
DIRECT (from Fsc to Fc) | +1% | ||
Property location in the semi-central municipal trade area | DIRECT (from Fp to Fsc) | +35% | |
INVERSE (from Fc to Fsc) | −1% | ||
Property location in the peripheral municipal trade area | INVERSE (from Fc to Fp) | −27% | |
INVERSE (from Fsc to Fp) | −26% |
City | Variable | Functional Relationship Typology | Average Contribution on Rental Price [%] |
---|---|---|---|
TURIN | Internal area | DIRECT | +18% |
Surface area of green areas | DIRECT | +2% | |
Condominium areas | DIRECT | +18% | |
Bathroom | DIRECT | +1% | |
Good quality of the property maintenance conditions | DIRECT (from Cp to Cg) | +18% | |
INVERSE (from Ce to Cg) | −4% | ||
Excellent quality of the property maintenance conditions | DIRECT (from Cp to Ce) | +23% | |
DIRECT (from Cg to Ce) | +5% | ||
EPC labels from A4 to B | DIRECT | +91% | |
Subway | DIRECT | +2% | |
University Center | INVERSE | −2% | |
Central pole | INVERSE | −2% | |
Property location in the central municipal trade area | DIRECT | +135% |
City | Variable | Functional Relationship Typology | Average Contribution on Rental Price [%] |
---|---|---|---|
ROME | Internal area | DIRECT | +21% |
Surface area of balconies | DIRECT | +6% | |
Floor | DIRECT | +161% | |
Bathroom | DIRECT | +26% | |
Excellent quality of the property maintenance conditions | DIRECT | +13% | |
EPC labels from C to E | DIRECT | +17% | |
Subway | DIRECT | +3% | |
Central pole | INVERSE | −7% | |
Property location in the central municipal trade area | DIRECT (from Fsc to Fc) | +17% | |
Property location in the semi-central municipal trade area | INVERSE (from Fc to Fsc) | −14% | |
DIRECT (from Fp to Fsc) | +76% |
City | Variable | Functional Relationship Typology | Average Contribution on Rental Price [%] |
---|---|---|---|
NAPLES | Internal area | DIRECT | +12% |
Floor | DIRECT | +1% | |
Bathroom | DIRECT | +35% | |
Age of the building | DIRECT | +2% | |
Central train station | DIRECT | +2% | |
Urban green space | INVERSE | −6% | |
Property location in the central municipal trade area | DIRECT (from Fsc to Fc) | +25% | |
DIRECT (from Fp to Fc) | +44% | ||
Property location in the semi-central municipal trade area | INVERSE (from Fc to Fsc) | −20% | |
DIRECT (from Fp to Fsc) | +15% |
City | Variable | Functional Relationship Typology | Average Contribution on Rental Price [%] |
---|---|---|---|
CATANIA | Internal area | DIRECT | +15% |
Surface area of balconies | DIRECT | +3% | |
Surface area of gardens | DIRECT | +8% | |
Floor | DIRECT | +7% | |
Bathroom | DIRECT | +20% | |
Kitchen | DIRECT | +5% | |
Excellent quality of the property maintenance conditions | DIRECT | +13% | |
EPC labels from A4 to B | DIRECT | +4% | |
Age of the building | DIRECT | +17% | |
Subway | INVERSE | −3% | |
Central train station | INVERSE | −1% | |
University center | DIRECT | +6% | |
Property location in the central municipal trade area | DIRECT | +8% |
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Tajani, F.; Di Liddo, F.; Ranieri, R.; Anelli, D. An Automatic Tool for the Determination of Housing Rental Prices: An Analysis of the Italian Context. Sustainability 2022, 14, 309. https://doi.org/10.3390/su14010309
Tajani F, Di Liddo F, Ranieri R, Anelli D. An Automatic Tool for the Determination of Housing Rental Prices: An Analysis of the Italian Context. Sustainability. 2022; 14(1):309. https://doi.org/10.3390/su14010309
Chicago/Turabian StyleTajani, Francesco, Felicia Di Liddo, Rossana Ranieri, and Debora Anelli. 2022. "An Automatic Tool for the Determination of Housing Rental Prices: An Analysis of the Italian Context" Sustainability 14, no. 1: 309. https://doi.org/10.3390/su14010309
APA StyleTajani, F., Di Liddo, F., Ranieri, R., & Anelli, D. (2022). An Automatic Tool for the Determination of Housing Rental Prices: An Analysis of the Italian Context. Sustainability, 14(1), 309. https://doi.org/10.3390/su14010309