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Multivariate ordinal regression models: an analysis of corporate credit ratings

机译:多元序数回归模型:企业信用评级分析

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摘要

Correlated ordinal data typically arises from multiple measurements on a collection of subjects. Motivated by an application in credit risk, where multiple credit rating agencies assess the creditworthiness of a firm on an ordinal scale, we consider multivariate ordinal regression models with a latent variable specification and correlated error terms. Two different link functions are employed, by assuming a multivariate normal and a multivariate logistic distribution for the latent variables underlying the ordinal outcomes. Composite likelihood methods, more specifically the pairwise and tripletwise likelihood approach, are applied for estimating the model parameters. Using simulated data sets with varying number of subjects, we investigate the performance of the pairwise likelihood estimates and find them to be robust for both link functions and reasonable sample size. The empirical application consists of an analysis of corporate credit ratings from the big three credit rating agencies (Standard & Poor's, Moody's and Fitch). Firm-level and stock price data for publicly traded US firms as well as an unbalanced panel of issuer credit ratings are collected and analyzed to illustrate the proposed framework.
机译:相关的序数数据通常来自对一组对象的多次测量。受信用风险应用(多个信用评级机构按序数规模评估公司的信用度)的影响,我们考虑了具有潜在变量规范和相关误差项的多元序数回归模型。通过假设序数结果的潜在变量具有多元正态分布和多元逻辑分布,可采用两个不同的链接函数。组合似然法,更具体地说是成对和三重似然法,被用于估计模型参数。使用具有不同数量主题的模拟数据集,我们调查了成对似然估计的性能,并发现它们对于链接函数和合理的样本量均具有鲁棒性。实证应用包括对三大信用评级机构(标准普尔,穆迪和惠誉)的公司信用评级进行分析。收集并分析了美国上市公司的公司水平和股价数据以及发行人信用评级的不平衡面板,以说明拟议的框架。

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