In this paper, we model the rating process of an entity by using a geometrical approach. We model rating transitions as an SDE on a Lie group. Specifically, we focus on calibrating the model to both historical data (rating transition matrices) and market data (CDS quotes) and compare the most popular choices of changes of measure to switch from the historical probability to the risk-neutral one. For this, we show how the classical Girsanov theorem can be applied in the Lie group setting. Moreover, we overcome some of the imperfections of rating matrices published by rating agencies, which are computed with the cohort method, by using a novel Deep Learning approach. This leads to an improvement of the entire scheme and makes the model more robust for applications. We apply our model to compute bilateral credit and debit valuation adjustments of a netting set under a CSA with thresholds depending on ratings of the two parties.
翻译:在本文中,我们用几何方法来模拟实体的评级过程。 我们用一个 Lie 组群的SDE 模型来模拟一个实体的评级过程。 具体地说, 我们侧重于将模型与历史数据( 评级过渡矩阵) 和市场数据( CDS 引号) 进行校准, 比较最受欢迎的计量变化选择, 从历史概率转换到风险中性。 为此, 我们展示了如何在 Lie 组群设置中应用古典Girsanov 理论。 此外, 我们通过使用新颖的深度学习方法, 克服了评级机构公布的评级矩阵的一些不完善之处。 这导致整个计划得到改进,并使模型在应用上更加可靠。 我们运用了我们的模型,根据双方的评分, 计算在 CSA 下设定的净额计算双边信用和借项估值调整的阈值, 其阈值取决于双方的评分。