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首页> 外文期刊>Journal of the royal statistical society >Censored regression for modelling small arms trade volumes and its 'Forensic' use for exploring unreported trades
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Censored regression for modelling small arms trade volumes and its 'Forensic' use for exploring unreported trades

机译:审查了对小型武器贸易量建模及其“法医”探索未报告交易的回归

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In this paper, we use a censored regression model to investigate data on the international trade of small arms and ammunition provided by the Norwegian Initiative on Small Arms Transfers. Taking a network-based view on the transfers, we do not only rely on exogenous covari-ates but also estimate endogenous network effects. We apply a spatial autocorrelation gravity model with multiple weight matrices. The likelihood is maximized employing the Monte Carlo expectation maximization algorithm. Our approach reveals strong and stable endogenous network effects. Furthermore, we find evidence for a substantial path dependence as well as a close connection between exports of civilian and military small arms. The model is then used in a 'forensic' manner to analyse latent network structures and thereby to identify countries with higher or lower tendency to export or import than reflected in the data. The approach is also validated using a simulation study.
机译:在本文中,我们使用审查的回归模型来调查挪威倡议对小型武器转移的挪威权提供的小武器和弹药的国际贸易数据。 在转移到基于网络的视图,我们不仅依靠外源性的Covari-ates,而且估计内源性网络效应。 我们使用多重矩阵应用空间自相关重力模型。 可能性最大化采用Monte Carlo期望最大化算法。 我们的方法揭示了内源性稳定稳定的内源性网络效应。 此外,我们发现了大量路径依赖的证据,以及民用和军用小武器的出口之间密切联系。 然后,该模型以“取证”方式用于分析潜在网络结构,从而识别出口或导入倾向更高或更低的国家而不是数据。 还使用模拟研究验证该方法。

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