Wasserstein barycenter for link prediction in temporal networks

IF 1.5 3区 数学 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS
A. Spelta, N. Pecora
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引用次数: 1

Abstract

We propose a flexible link forecast methodology for weighted temporal networks. Our probabilistic model estimates the evolving link dynamics among a set of nodes through Wasserstein barycentric coordinates arising within the optimal transport theory. Optimal transport theory is employed to interpolate among network evolution sequences and to compute the probability distribution of forthcoming links. Besides generating point link forecasts for weighted networks, the methodology provides the probability that a link attains weights in a certain interval, namely a quantile of the weights distribution. We test our approach to forecast the link dynamics of the worldwide Foreign Direct Investments network and of the World Trade Network, comparing the performance of the proposed methodology against several alternative models. The performance is evaluated by applying non-parametric diagnostics derived from binary classifications and error measures for regression models. We find that the optimal transport framework outperforms all the competing models when considering quantile forecast. On the other hand, for point forecast, our methodology produces accurate results that are comparable with the best performing alternative model. Results also highlight the role played by model constraints in the determination of future links emphasising that weights are better predicted when accounting for geographical rather than economic distance.
时间网络中链路预测的Wasserstein重心
提出了一种灵活的加权时间网络链路预测方法。我们的概率模型通过在最优输运理论中产生的Wasserstein质心坐标来估计一组节点之间不断变化的链路动力学。采用最优传输理论对网络演化序列进行插值,并计算即将到来链路的概率分布。除了为加权网络生成点链路预测外,该方法还提供了链路在一定区间内获得权重的概率,即权重分布的分位数。我们测试了我们的方法来预测全球外国直接投资网络和世界贸易网络的联系动态,并将所提出的方法与几个替代模型的性能进行了比较。通过应用由二元分类和回归模型误差度量衍生的非参数诊断来评估性能。当考虑分位数预测时,我们发现最优运输框架优于所有竞争模型。另一方面,对于点预测,我们的方法产生的准确结果与表现最好的替代模型相当。结果还强调了模型约束在确定未来联系方面所起的作用,强调了当考虑地理距离而不是经济距离时,权重更能被预测。
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来源期刊
CiteScore
2.90
自引率
5.00%
发文量
136
审稿时长
>12 weeks
期刊介绍: Series A (Statistics in Society) publishes high quality papers that demonstrate how statistical thinking, design and analyses play a vital role in all walks of life and benefit society in general. There is no restriction on subject-matter: any interesting, topical and revelatory applications of statistics are welcome. For example, important applications of statistical and related data science methodology in medicine, business and commerce, industry, economics and finance, education and teaching, physical and biomedical sciences, the environment, the law, government and politics, demography, psychology, sociology and sport all fall within the journal''s remit. The journal is therefore aimed at a wide statistical audience and at professional statisticians in particular. Its emphasis is on well-written and clearly reasoned quantitative approaches to problems in the real world rather than the exposition of technical detail. Thus, although the methodological basis of papers must be sound and adequately explained, methodology per se should not be the main focus of a Series A paper. Of particular interest are papers on topical or contentious statistical issues, papers which give reviews or exposés of current statistical concerns and papers which demonstrate how appropriate statistical thinking has contributed to our understanding of important substantive questions. Historical, professional and biographical contributions are also welcome, as are discussions of methods of data collection and of ethical issues, provided that all such papers have substantial statistical relevance.
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