2018 IEEE 5th International Conference on Data Science and Advanced Analytics (DSAA) 2018
DOI: 10.1109/dsaa.2018.00043
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The Economic Value of Neighborhoods: Predicting Real Estate Prices from the Urban Environment

Abstract: Housing costs have a significant impact on individuals, families, businesses, and governments. Recently, online companies such as Zillow have developed proprietary systems that provide automated estimates of housing prices without the immediate need of professional appraisers. Yet, our understanding of what drives the value of houses is very limited. In this paper, we use multiple sources of data to entangle the economic contribution of the neighborhood's characteristics such as walkability and security percep… Show more

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Cited by 30 publications
(31 citation statements)
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References 31 publications
(49 reference statements)
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“…As the economy grows, the value of stocks, real estate, and existing goods rises as inflation progresses rapidly when people's income and corporate capital investment increase [38]. If the economic growth rate decreases compared to the present, the demand for and value of real estate and stocks will decrease.…”
Section: Economic Growth Rate / Unemplyoment Ratementioning
confidence: 99%
“…As the economy grows, the value of stocks, real estate, and existing goods rises as inflation progresses rapidly when people's income and corporate capital investment increase [38]. If the economic growth rate decreases compared to the present, the demand for and value of real estate and stocks will decrease.…”
Section: Economic Growth Rate / Unemplyoment Ratementioning
confidence: 99%
“…Analyzing city dynamics by mining different data sources can indicate the trend of the city's economy [8]. For example in [9], multiple data sources, including OpenStreetMap data, urban atlas data, and property taxes were used to predict the real estate prices using gradient-boosted trees. In another study, gradient-boosted decision tree (DT) trained with a dataset collected from the largest consumer review site in China, Dianping, was used to predict the ability of restaurants to survive and avoid closure [21].…”
Section: B Urban Economic Computingmentioning
confidence: 99%
“…In smart cities, urban analysis has been utilized for intelligent applications such as for urban planning, transportation systems, city environment, energy consumption, public safety and security, and city economy [8]. In addition, a number of researches have explored city economic applications such as predicting real estate prices [9], searching for the optimal placement of new businesses [10], and predicting potential customers or visitors of specific venues [11].…”
Section: Introductionmentioning
confidence: 99%
“…The availability and increased performance of Machine Learning approaches has led to a widespread use of such technologies in AVMs for real estate (Baldominos et al, 2018;Caplin et al, 2008;De Nadai & Lepri, 2018;Gao et al, 2019;Jaen, 2002;Ng, 2015). This includes the use of artificial neural networks (Bahia, 2013;Limsombunchai, 2004;Nghiep & Al, 2001;Núñez Tabales et al, 2013;Tibell, 2014), decision trees (Jaen, 2002), random forests (Čeh et al, 2018;Kok et al, 2017;Moosavi, 2017), gradient boosting (Kok et al, 2017), Bayesian compressed vector auto-regressive model (Gupta et al, 2019), and support vector machines (Bui et al, 2017;Mu et al, 2014).…”
Section: Implementation With Ai and Machine Learningmentioning
confidence: 99%