Regulatory stress tests have become the primary tool for setting capital requirements at the largest U.S. banks. The Federal Reserve uses confidential models to evaluate bank-specific outcomes for bank-specific portfolios in shared stress scenarios. As a matter of policy, the same models are used for all banks, despite considerable heterogeneity across institutions; individual banks have contended that some models are not suited to their businesses. Motivated by this debate, we ask, what is a fair aggregation of individually tailored models into a common model? We argue that simply pooling data across banks treats banks equally but is subject to two deficiencies: it may distort the impact of legitimate portfolio features, and it is vulnerable to implicit misdirection of legitimate information to infer bank identity. We compare various notions of regression fairness to address these deficiencies, considering both forecast accuracy and equal treatment. In the setting of linear models, we argue for estimating and then discarding centered bank fixed effects as preferable to simply ignoring differences across banks. We present evidence that the overall impact can be material. We also discuss extensions to nonlinear models.
翻译:美联储使用保密模式来评估银行特定投资组合在共同压力情景下的具体结果。作为一个政策问题,所有银行都使用同样的模式,尽管各机构之间差异很大;个别银行认为有些模式不适合自己的业务。我们问,受这次辩论的驱使,什么是个人定制模式的公平组合,形成一个共同模式?我们争辩说,仅仅将不同银行的数据汇集在一起,就能对银行一视同仁,但存在两个缺陷:它可能扭曲合法组合特征的影响,并且很容易被不言而喻地误用合法信息来推断银行身份。我们比较了各种回归公平的概念,以克服这些缺陷,同时考虑到预测的准确性和平等待遇。在线性模型的设置中,我们主张估计并随后抛弃核心银行固定效应,认为这样做比完全忽视银行之间的差异更为可取。我们提出证据,说明总体影响可能是实质性的。我们还讨论非线性模型的扩展问题。