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首页> 外文期刊>Journal of the Royal Statistical Society >Multiple-systems analysis for the quantification of modern slavery: classical and Bayesian approaches
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Multiple-systems analysis for the quantification of modern slavery: classical and Bayesian approaches

机译:现代奴隶制量化的多系统分析:古典和贝叶斯方法

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摘要

Multiple-systems estimation is a key approach for quantifying hidden populations such as the number of victims of modern slavery. The UK Government published an estimate of 10000-13000 victims, constructed by the present author, as part of the strategy leading to the Modern Slavery Act 2015. This estimate was obtained by a stepwise multiple-systems method based on six lists. Further investigation shows that a small proportion of the possible models give rather different answers, and that other model fitting approaches may choose one of these. Three data sets collected in the field of modern slavery, together with a data set about the death toll in the Kosovo conflict, are used to investigate the stability and robustness of various multiple-systems-estimate methods. The crucial aspect is the way that interactions between lists are modelled, because these can substantially affect the results. Model selection and Bayesian approaches are considered in detail, in particular to assess their stability and robustness when applied to real modern slavery data. A new Markov chain Monte Carlo Bayesian approach is developed; overall, this gives robust and stable results at least for the examples considered. The software and data sets are freely and publicly available to facilitate wider implementation and further research.
机译:多系统估计是量化隐藏群体的关键方法,例如现代奴隶制的受害者的数量。英国政府估计由本作者构建的10000-13000名受害者,作为2015年现代奴役法案的战略的一部分。该估计是通过基于六个清单的逐步多系统方法获得的。进一步的调查表明,一小部分可能的模型给出了相当不同的答案,并且其他模型拟合方法可以选择其中一个。在现代奴隶制领域收集的三种数据集与科索沃冲突中的关于死亡人数的数据集合,用于研究各种多系统估算方法的稳定性和稳健性。关键方面是列表之间的交互的建模方式,因为这些可以大大影响结果。详细考虑了模型选择和贝叶斯方法,特别是在应用于真正的现代奴隶制数据时评估其稳定性和鲁棒性。开发了一个新的马尔可夫链蒙特卡罗·贝叶斯方法;总的来说,这至少为所考虑的示例提供了强大和稳定的结果。软件和数据集自由而公开可供促进更广泛的实施和进一步的研究。

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