谷歌趋势能预测寻求庇护者的目的地选择吗?

IF 3 2区 计算机科学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Haodong Qi, Tuba Bircan
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引用次数: 0

摘要

谷歌趋势(GT)整理搜索关键字的数量随着时间和地理位置。从理论上讲,这些数据可以提供人们事先迁移意图的见解,因此对未来迁移的预测分析很有用。然而,从经验上看,GT的预测能力是敏感的,它可能会因地理环境、选择用于分析的搜索关键词、谷歌的市场份额以及用户的特征和搜索行为等而有所不同。与之前大多数试图证明使用GT预测迁移流的好处的研究不同,本文解决了一个关键但较少讨论的问题:GT何时不能增强迁移模型的性能。利用欧盟统计局关于首次庇护申请的统计数据和从各种数据源收集的一组推拉指标,我们训练了移民文献中常用的三类重力模型,并研究了包含GT如何影响模型预测难民目的地选择的能力。结果表明,包括GT的影响在很大程度上取决于不同模型的复杂性。具体来说,GT只能提高相对简单的模型的性能,而不能提高那些由流量固定效应或自回归效应增强的模型的性能。这些发现要求在迁移建模和预测的背景下,更全面地分析使用GT以及其他数字痕迹数据的优势和局限性。我们希望这种细致入微的视角能够促进该领域的进一步创新,并最终使我们更接近人类迁移的全面建模框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Can Google Trends predict asylum-seekers’ destination choices?

Can Google Trends predict asylum-seekers’ destination choices?
Abstract Google Trends (GT) collate the volumes of search keywords over time and by geographical location. Such data could, in theory, provide insights into people’s ex ante intentions to migrate, and hence be useful for predictive analysis of future migration. Empirically, however, the predictive power of GT is sensitive, it may vary depending on geographical context, the search keywords selected for analysis, as well as Google’s market share and its users’ characteristics and search behavior, among others. Unlike most previous studies attempting to demonstrate the benefit of using GT for forecasting migration flows, this article addresses a critical but less discussed issue: when GT cannot enhance the performances of migration models. Using EUROSTAT statistics on first-time asylum applications and a set of push-pull indicators gathered from various data sources, we train three classes of gravity models that are commonly used in the migration literature, and examine how the inclusion of GT may affect models’ abilities to predict refugees’ destination choices. The results suggest that the effects of including GT are highly contingent on the complexity of different models. Specifically, GT can only improve the performance of relatively simple models, but not of those augmented by flow Fixed-Effects or by Auto-Regressive effects. These findings call for a more comprehensive analysis of the strengths and limitations of using GT, as well as other digital trace data, in the context of modeling and forecasting migration. It is our hope that this nuanced perspective can spur further innovations in the field, and ultimately bring us closer to a comprehensive modeling framework of human migration.
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来源期刊
EPJ Data Science
EPJ Data Science MATHEMATICS, INTERDISCIPLINARY APPLICATIONS -
CiteScore
6.10
自引率
5.60%
发文量
53
审稿时长
13 weeks
期刊介绍: EPJ Data Science covers a broad range of research areas and applications and particularly encourages contributions from techno-socio-economic systems, where it comprises those research lines that now regard the digital “tracks” of human beings as first-order objects for scientific investigation. Topics include, but are not limited to, human behavior, social interaction (including animal societies), economic and financial systems, management and business networks, socio-technical infrastructure, health and environmental systems, the science of science, as well as general risk and crisis scenario forecasting up to and including policy advice.
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