Forecasting commercial real estate indicators under COVID-19 by adopting human activity using social big data

Maral Taşcılar, Kerem Yavuz Arslanlı
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引用次数: 1

Abstract

Dependence of the real estate sector on human activity has been unveiled during the COVID-19 pandemic. In addition, it is assumed that trends emitted from the location-based social networks (LBSNs) successfully reflect human activities, hence commercial property trends. This study examined the use of social media to forecast commercial real estate figures during COVID-19 in Istanbul and determined the potential of social media data for forecasting the future rent/price levels of retail properties. Instagram and Twitter, two major LBSN platforms, were selected as social media data sources. First, 17 million geo-tagged Instagram posts and 230 thousand geo-referenced tweets were collected. Then, the data sets were superposed on COVID-19 key points in Turkey and the relationships observed. Finally, the data sets were combined with the commercial real estate data to monitor increases in the accuracy of rent and price predictions. Beşiktaş District of Istanbul was chosen as the pilot region to test the methodology. The results showed that the LBSN-supported models outperformed baseline models most of the time for price predictions and occasionally for rent predictions. Also, both Instagram and Twitter were found essential to the study and could not be omitted. This study demonstrates the significance and leveraging potential of applying human activities to the decision-making processes of the commercial real estate sector under COVID-19 conditions. This is the first study to adopt LBSN data to forecast commercial property prices.

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利用社交大数据,采用人类活动预测新冠疫情下商业地产指标
在新冠肺炎大流行期间,房地产行业对人类活动的依赖已经暴露出来。此外,假设从基于位置的社交网络(LBSNs)发出的趋势成功地反映了人类活动,因此商业地产趋势。本研究调查了2019冠状病毒病期间伊斯坦布尔使用社交媒体预测商业房地产数据的情况,并确定了社交媒体数据在预测零售物业未来租金/价格水平方面的潜力。LBSN的两个主要平台Instagram和Twitter被选为社交媒体数据源。首先,收集了1700万条带有地理标记的Instagram帖子和23万条地理参考推文。然后,将数据集与土耳其的COVID-19关键点以及观察到的关系进行叠加。最后,将这些数据集与商业房地产数据相结合,以监测租金和价格预测准确性的提高。伊斯坦布尔的be伊克塔伊区被选为测试该方法的试验区。结果表明,lbsn支持的模型在大多数情况下都优于基准模型,用于价格预测,偶尔用于租金预测。此外,Instagram和Twitter对这项研究至关重要,不能被忽略。本研究展示了在COVID-19条件下将人类活动应用于商业房地产部门决策过程的重要性和利用潜力。本研究首次采用LBSN数据预测商业地产价格。
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来源期刊
Asia-Pacific Journal of Regional Science
Asia-Pacific Journal of Regional Science Social Sciences-Urban Studies
CiteScore
3.10
自引率
7.10%
发文量
46
期刊介绍: The Asia-Pacific Journal of Regional Science expands the frontiers of regional science through the diffusion of intrinsically developed and advanced modern, regional science methodologies throughout the Asia-Pacific region. Articles published in the journal foster progress and development of regional science through the promotion of comprehensive and interdisciplinary academic studies in relationship to research in regional science across the globe. The journal’s scope includes articles dedicated to theoretical economics, positive economics including econometrics and statistical analysis and input–output analysis, CGE, Simulation, applied economics including international economics, regional economics, industrial organization, analysis of governance and institutional issues, law and economics, migration and labor markets, spatial economics, land economics, urban economics, agricultural economics, environmental economics, behavioral economics and spatial analysis with GIS/RS data education economics, sociology including urban sociology, rural sociology, environmental sociology and educational sociology, as well as traffic engineering. The journal provides a unique platform for its research community to further develop, analyze, and resolve urgent regional and urban issues in Asia, and to further refine established research around the world in this multidisciplinary field. The journal invites original articles, proposals, and book reviews.The Asia-Pacific Journal of Regional Science is a new English-language journal that spun out of Chiikigakukenkyuu, which has a 45-year history of publishing the best Japanese research in regional science in the Japanese language and, more recently and more frequently, in English. The development of regional science as an international discipline has necessitated the need for a new publication in English. The Asia-Pacific Journal of Regional Science is a publishing vehicle for English-language contributions to the field in Japan, across the complete Asia-Pacific arena, and beyond.Content published in this journal is peer reviewed (Double Blind).
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