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CMARS and GAM & CQPModern optimization methods applied to international credit default prediction

机译:CMARS和GAM&CQP用于国际信用违约预测的现代优化方法

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摘要

In this paper, we apply newly developed methods called GAM & CQP and CMARS for country defaults. These are techniques refined by us using Conic Quadratic Programming. Moreover, we compare these new methods with common and regularly used classification tools, applied on 33 emerging markets' data in the period of 19802005. We conclude that GAM & CQP and CMARS provide an efficient alternative in predictions. The aim of this study is to develop a model for predicting the countries' default possibilities with the help of modern techniques of continuous optimization, especially conic quadratic programming. We want to show that the continuous optimization techniques used in data mining are also very successful in financial theory and application. By this paper we contribute to further benefits from model-based methods of applied mathematics in the financial sector. Herewith, we aim to help build up our nations.
机译:在本文中,我们将新开发的称为GAM&CQP和CMARS的方法用于国家/地区默认设置。这些是我们使用圆锥二次编程改进的技术。此外,我们将这些新方法与19802005年期间应用于33个新兴市场数据的常用分类工具进行了比较。我们得出结论,GAM&CQP和CMARS提供了一种有效的预测替代方法。这项研究的目的是建立一个模型,借助连续优化的现代技术,尤其是圆锥二次规划,来预测这些国家的违约可能性。我们想证明,数据挖掘中使用的连续优化技术在财务理论和应用中也非常成功。通过本文,我们为金融领域中基于模型的应用数学方法带来了更多收益。因此,我们旨在帮助建立我们的国家。

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