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The Economic Value of Neighborhoods: Predicting Real Estate Prices from the Urban Environment

机译:社区的经济价值:根据城市环境预测房地产价格

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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 perception. We also develop and release a framework able to now-cast housing prices from Open data, without the need for historical transactions. Experiments involving 70,000 houses in 8 Italian cities highlight that the neighborhood's vitality and walkability seem to drive more than 20% of the housing value. Moreover, the use of this information improves the nowcast by 60%. Hence, the use of property's surroundings' characteristics can be an invaluable resource to appraise the economic and social value of houses after neighborhood changes and, potentially, anticipate gentrification.
机译:住房成本对个人,家庭,企业和政府都有重大影响。最近,诸如Zillow之类的在线公司已经开发了专有系统,该系统可以自动评估住房价格,而无需专业评估人员的即时需求。但是,我们对驱动房屋价值的因素的了解非常有限。在本文中,我们使用多种数据源来纠缠邻里特性(如步行和安全感知)对经济的贡献。我们还开发并发布了一个框架,该框架现在可以从开放数据中预测房价,而无需进行历史交易。在意大利8个城市进行的涉及70,000所房屋的实验表明,该社区的活力和步行性似乎推动了房屋价值的20%以上。而且,使用此信息可以将临近预报提高60%。因此,利用财产的周围环境特征可以成为评估邻里变化并可能预料高档化之后评估房屋经济和社会价值的宝贵资源。

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