房地产大数据制度的转变

IF 1.6 Q3 BUSINESS, FINANCE Journal of Property Investment & Finance Pub Date : 2020-05-03 DOI:10.1108/jpif-10-2019-0134
J. Delisle, Brent Never, T. Grissom
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引用次数: 7

摘要

本文探讨了“大数据制度”的出现及其对房地产行业造成的破坏。本文定义了大数据,并说明了归纳的大数据方法如何帮助改善决策。本文展示了大数据如何支持归纳推理,从而提高房地产决策。为了帮助读者理解大数据体制转变的动态和驱动因素,本文提供了一个广泛的超链接列表。本文的结论是,将传统和非传统数据融合到统一的数据环境中以支持增强决策是可能的。通过设计思维的应用,本文阐述了社会责任发展如何针对服务不足的城市地区,并帮助为居民和他们居住的社区服务。本文通过一个假设的项目展示了如何利用大数据来支持决策。本文没有提出先进的分析,但重点是汇总不同的纵向数据,可以在未来的研究中支持这种分析。本文主要关注美国市场,但该方法可以扩展到大数据日益可用的其他市场。该论文阐述了如何使用大数据分析来帮助满足边缘化居民和租户以及破败地区的需求。本文记录了大数据运动,并展示了非传统数据如何支持决策。
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The big data regime shift in real estate
The paper explores the emergence of the “big data regime” and the disruption that it is causing for the real estate industry. The paper defines big data and illustrates how an inductive, big data approach can help improve decision-making.,The paper demonstrates how big data can support inductive reasoning that can lead to enhanced real estate decisions. To help readers understand the dynamics and drivers of the big data regime shift, an extensive list of hyperlinks is included.,The paper concludes that it is possible to blend traditional and non-traditional data into a unified data environment to support enhanced decision-making. Through the application of design thinking, the paper illustrates how socially responsible development can be targeted to under-served urban areas and helps serve residents and the communities in which they live.,The paper demonstrates how big data can be harnessed to support decision-making using a hypothetical project. The paper does not present advanced analytics but focuses aggregating disparate longitudinal data that could support such analysis in future research.,The paper focuses on the US market, but the methodology can be extended to other markets where big data is increasingly available.,The paper illustrates how big data analytics can be used to help serve the needs of marginalized residents and tenants, as well as blighted areas.,This paper documents the big data movement and demonstrates how non-traditional data can support decision-making.
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来源期刊
CiteScore
3.50
自引率
23.10%
发文量
33
期刊介绍: Fully refereed papers on practice and methodology in the UK, continental Western Europe, emerging markets of Eastern Europe, China, Australasia, Africa and the USA, in the following areas: ■Academic papers on the latest research, thinking and developments ■Law reports assessing new legislation ■Market data for a comprehensive review of current research ■Practice papers - a forum for the exchange of ideas and experiences
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