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Activity Number: 39 - Methods in Financial Risk Assessment
Type: Contributed
Date/Time: Sunday, July 30, 2017 : 2:00 PM to 3:50 PM
Sponsor: Section on Risk Analysis
Abstract #323674
Title: Multivariate Ordinal Regression Models: An Analysis of Corporate Credit Ratings
Author(s): Rainer Hirk* and Laura Vana and Kurt Hornik
Companies: WU Vienna University of Economics and Business and WU Vienna University of Economics and Business and WU Vienna University of Economics and Business
Keywords: composite likelihood ; credit ratings ; financial ratios ; latent variable models ; multivariate ordered probit ; multivariate ordered logit
Abstract:

Correlated ordinal data typically arise 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 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 are applied for estimating the model parameters. We investigate how sensitive the pairwise likelihood estimates are to the number of subjects and to the presence of observations missing completely at random, and find that these estimates are 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 companies as well as an incomplete panel of issuer credit ratings are collected and analyzed to illustrate the proposed framework.


Authors who are presenting talks have a * after their name.

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