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Geography of online network ties: A predictive modelling approach

机译:在线网络联系的地理位置:一种预测建模方法

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Internet platforms are increasingly enabling individuals to access and interact with a wider, globally dispersed group of peers. The promise of these platforms is that the geographic distance is no longer a barrier to forming network ties. However, whether these platforms truly alleviate the influence of geographic distance remains unexplored. In this study, we examine the role of geographic distance with machine learning approach using a unique dataset of the network ties between traders in an online social trading platform. Specifically, we determine the extent to which, compared to other types of distances, geographic distance predicts the occurrences of the network ties in country dyads. Using cluster analysis and predictive modelling, we show that not only the geographic distance and network ties exhibit an inverse association but also that geographic distance is the strongest predictor of such ties. (C) 2017 Elsevier B.V. All rights reserved.
机译:Internet平台越来越使个人能够访问更广泛的,遍布全球的同行群体并与之交互。这些平台的承诺是地理距离不再是形成网络联系的障碍。但是,这些平台是否真正减轻地理距离的影响尚待探讨。在这项研究中,我们使用在线社交交易平台中交易者之间网络联系的唯一数据集,通过机器学习方法研究了地理距离的作用。具体而言,我们确定与其他类型的距离相比,地理距离在多大程度上预测了国家二元组中网络联系的发生。使用聚类分析和预测模型,我们表明,不仅地理距离和网络联系表现出逆相关性,而且地理距离是此类联系的最强预测因子。 (C)2017 Elsevier B.V.保留所有权利。

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