Corporate rating forecasting using Artificial Intelligence statistical techniques
Author
Caridad López del Río, Lorena
Caridad, Daniel
Hanclova, Jana
Bousselmi, Hosh el Woujoud
Date
2019Subject
companies rating, forecasting rating, neural networks, multivariate statistical models, public dataMETS:
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Show full item recordAbstract
Forecasting companies long-term financial health is provided by Credit Rating
Agencies (CRA) such as S&P, Moody’s, Fitch and others. Estimates of rates are based
on publicly available data, and on the so-called ‘qualitative information’. Nowadays, it
is possible to produce quite precise forecasts for these ratings using economic and
financial information that is available in financial data bases, employing statistical
models or, alternatively, Artificial Intelligence techniques. Several approaches, both
cross section and dynamic are proposed, using different methods. Artificial Neural
Networks (ANN) provide better results than Multivariate statistical methods, and are
used to estimate ratings within all the range provided by the CRAs, obtaining more
desegregated results than several proposed models available for intervals of ratings.
Two large samples of companies ‘public data' obtained from Bloomberg are used to
obtain forecasts, of S&P and Moody’s ratings, directly from these data, with a high
level of accuracy. This also permits to check the published rating's reliability provided
by different CRAs.