2018
DOI: 10.2139/ssrn.3176962
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The Potential of Big Housing Data: An Application to the Italian Real-Estate Market

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Cited by 23 publications
(24 citation statements)
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References 34 publications
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“…Baptista et al (2016) also use λ = 0.95, obtained from Zoopla data (Zoopla is a popular online portal for real-estate services in England). Finally, Loberto et al (2018) also find a similar value from the analysis of a housing advertisements website in Italy. • Γ = 1000, N = 100, α = 0.1.…”
Section: Parameter Valuessupporting
confidence: 68%
“…Baptista et al (2016) also use λ = 0.95, obtained from Zoopla data (Zoopla is a popular online portal for real-estate services in England). Finally, Loberto et al (2018) also find a similar value from the analysis of a housing advertisements website in Italy. • Γ = 1000, N = 100, α = 0.1.…”
Section: Parameter Valuessupporting
confidence: 68%
“…Previous research on Automated Valuation Models for real estate has been initially led by so-called "hedonic" models (Goodman & Thibodeau, 2003;Hu et al, 2013;Lisi & Iacobini, 2013;Loberto et al, 2018). "Hedonic" literally suggests that the buying of the target property, and hence living in it, is a source of "pleasure".…”
Section: Hedonic Modelsmentioning
confidence: 99%
“…For a real estate appraisal company, the goal is to obtain an authoritative valuation for some property. Our target property price is thus corresponding to valuations performed by a registered expert, not to the prices as obtained from Web advertisements, as, e.g., in (Loberto et al, 2018;Moosavi, 2017). We however did use such advertised prices, but only as so-called "comparable" properties (see Section 4 below), that are routinely used by appraisal experts.…”
Section: Target Pricementioning
confidence: 99%
“…In this respect, Banca d'Italia has a longstanding tradition in assessing the short-term outlook on the basis of this kind of "unconventional" data, starting from forecasting models based on the consumption of electricity (Bodo and Signorini, 1987;Marchetti and Parigi, 2000) and, more recently, on road and rail transport flows. Studies relying on data from the Internet include Google-based models, as in D' Amuri and Marcucci (2017); analyses of the real estate market grounded in a dataset of housing advertisements, as in Pangallo and Loberto (2018) and Loberto, Luciani and Pangallo (2018); and attempts at measuring inflation expectations using Twitter, as in Angelico et al (2018). Finally, more traditional mediasuch as newspapershave been exploited to build news-based sentiment and uncertainty indicators based on text-mining techniques (Aprigliano et al, 2020).…”
Section: Introductionmentioning
confidence: 99%