In this research, we show how to expand existing approaches of generative adversarial networks (GANs) being used as economic scenario generators (ESG) to a whole internal model - with enough risk factors to model the full band-width of investments for an insurance company and for a one year horizon as required in Solvency 2. For validation of this approach as well as for optimisation of the GAN architecture, we develop new performance measures and provide a consistent, data-driven framework. Finally, we demonstrate that the results of a GAN-based ESG are similar to regulatory approved internal models in Europe. Therefore, GAN-based models can be seen as an assumption-free data-driven alternative way of market risk modelling.
翻译:在这一研究中,我们展示了如何将作为经济假想生成者而使用的基因对抗网络(GANs)的现有办法扩大到整个内部模式,并有足够的风险因素来模拟保险公司投资的全带宽,并且按照Solente 2中的要求,为期一年的跨度,以便验证这一办法和优化GAN结构,我们制定新的业绩计量,并提供一致的、以数据为驱动的框架。最后,我们证明,基于GAN的ESG的结果类似于欧洲经监管核准的内部模式。 因此,基于GAN的模型可以被视为市场风险建模的一种无假设、无数据驱动的替代方式。