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Numerical estimates of risk factors contingent on credit ratings
Journal article   Open access   Peer reviewed

Numerical estimates of risk factors contingent on credit ratings

Timon Gärtner, Serguei Kaniovski and Yuriy Kaniovskyi
Computational Management Science (online), Vol.18(4), pp.563-589
18
2021
Handle:
https://hdl.handle.net/10863/18867

Abstract

Macroeconomic scenario Combinatorial complexity Maximum likelihood Random search Genetic algorithm Penalty
Assuming a favorable or an adverse outcome for every combination of a credit class and an industry sector, a binary string, termed as amacroeconomic scenario, is considered. Given historical transition counts and a model for dependence among credit-rating migrations, a probability is assigned to each of the scenarios by maximizing a likelihood function. Applications of this distribution in financial risk analysis are suggested. Two classifications are considered: 7 non-default credit classes with 6 industry sectors and 2 non-default credit classes with 12 industry sectors. We propose a heuristic algorithm for solving the corresponding maximization problems of combinatorial complexity. Probabilities and correlations characterizing riskiness of random events involving several industry sectors and credit classes are reported.
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https://link.springer.com/article/10.1007/s10287-021-00405-9View

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