利用Web数据估计空间回归模型

IF 1.8 3区 经济学 Q3 ENVIRONMENTAL STUDIES
G. Arbia, V. Nardelli
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引用次数: 0

摘要

宏观计量经济学最近受到所谓“谷歌计量经济学”的影响。区域和空间科学对这一主题的关注相对较少,因为大数据革命正在挑战传统的计量经济技术,因为各种非传统收集的数据(如众包、网络抓取等)几乎都是地理编码的。然而,这些非常规收集的数据只代表统计学中所谓的“方便样本”,不允许任何合理的概率推断。本文旨在让研究人员意识到在应用工作中不明智地使用这些数据的后果,并提出一种在空间回归估计中最大限度地减少这种负面影响的技术。该方法包括在推理上下文中使用数据之前对数据进行操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Web-Data to Estimate Spatial Regression Models
Macro econometrics has been recently affected by the so-called ‘Google Econometrics’. Comparatively less attention has been paid to the subject by the regional and spatial sciences where the Big Data revolution is challenging the conventional econometric techniques with the availability of a variety of non- traditionally collected data (such as, e. g., crowdsourcing, web scraping, etc) which are almost invariably geo-coded. However, these unconventionally collected data represent only what in statistics is known as a “convenience sample” that does not allow any sound probabilistic inference. This paper aims at making aware researchers of the consequence of the unwise use of such data in the applied work and to propose a technique to minimize such the negative effects in the estimation of spatial regression. The method consists of manipulating the data prior their use in an inferential context.
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来源期刊
CiteScore
4.50
自引率
13.00%
发文量
26
期刊介绍: International Regional Science Review serves as an international forum for economists, geographers, planners, and other social scientists to share important research findings and methodological breakthroughs. The journal serves as a catalyst for improving spatial and regional analysis within the social sciences and stimulating communication among the disciplines. IRSR deliberately helps define regional science by publishing key interdisciplinary survey articles that summarize and evaluate previous research and identify fruitful research directions. Focusing on issues of theory, method, and public policy where the spatial or regional dimension is central, IRSR strives to promote useful scholarly research that is securely tied to the real world.
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