A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case
With the use of the Markov chain framework this work investigates the dynamics between the scores generated by the credit bureau Creditinfo. These scores, also called ratings, are assigned to companies established in Iceland and reflect their probability of default within the next twelve months. The...
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Format: | Thesis |
Language: | English |
Published: |
2021
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Online Access: | http://hdl.handle.net/1946/39936 |
_version_ | 1821555191999102976 |
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author | Andrea Valtorta 1989- |
author2 | Háskóli Íslands |
author_facet | Andrea Valtorta 1989- |
author_sort | Andrea Valtorta 1989- |
collection | Skemman (Iceland) |
description | With the use of the Markov chain framework this work investigates the dynamics between the scores generated by the credit bureau Creditinfo. These scores, also called ratings, are assigned to companies established in Iceland and reflect their probability of default within the next twelve months. The first part implements and compares different methods to calculate transition matrices, namely: the cohort method based on discrete-time observations and two other methods based on continuous-time observations, one assuming time homogeneity, the duration method, and the other relaxing such constraint, the Aalen-Johansen estimator. In the second part, non-Markovian behaviors are tested. The likelihood ratio test suggests that a Markov chain of third order is the most appropriate model for the data at hand. In addition, autoregression was used as an alternative approach to double-check such results. This leads to the next analysis, checking whether rating drift is present. The momentum matrix seems to indicate that, even if some scores show a path dependence, the momentum concept is not there and a company whose rating dropped is not more likely to drop even further or vice versa. It was also important to verify time homogeneity, the chi-squared test suggested that time is not homogeneous and that the transition probabilities vary from one year to the next. |
format | Thesis |
genre | Iceland |
genre_facet | Iceland |
geographic | Johansen |
geographic_facet | Johansen |
id | ftskemman:oai:skemman.is:1946/39936 |
institution | Open Polar |
language | English |
long_lat | ENVELOPE(67.217,67.217,-70.544,-70.544) |
op_collection_id | ftskemman |
op_relation | http://hdl.handle.net/1946/39936 |
publishDate | 2021 |
record_format | openpolar |
spelling | ftskemman:oai:skemman.is:1946/39936 2025-01-16T22:38:27+00:00 A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case Andrea Valtorta 1989- Háskóli Íslands 2021-09 application/pdf http://hdl.handle.net/1946/39936 en eng http://hdl.handle.net/1946/39936 Tölfræði Thesis Master's 2021 ftskemman 2022-12-11T06:59:47Z With the use of the Markov chain framework this work investigates the dynamics between the scores generated by the credit bureau Creditinfo. These scores, also called ratings, are assigned to companies established in Iceland and reflect their probability of default within the next twelve months. The first part implements and compares different methods to calculate transition matrices, namely: the cohort method based on discrete-time observations and two other methods based on continuous-time observations, one assuming time homogeneity, the duration method, and the other relaxing such constraint, the Aalen-Johansen estimator. In the second part, non-Markovian behaviors are tested. The likelihood ratio test suggests that a Markov chain of third order is the most appropriate model for the data at hand. In addition, autoregression was used as an alternative approach to double-check such results. This leads to the next analysis, checking whether rating drift is present. The momentum matrix seems to indicate that, even if some scores show a path dependence, the momentum concept is not there and a company whose rating dropped is not more likely to drop even further or vice versa. It was also important to verify time homogeneity, the chi-squared test suggested that time is not homogeneous and that the transition probabilities vary from one year to the next. Thesis Iceland Skemman (Iceland) Johansen ENVELOPE(67.217,67.217,-70.544,-70.544) |
spellingShingle | Tölfræði Andrea Valtorta 1989- A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case |
title | A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case |
title_full | A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case |
title_fullStr | A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case |
title_full_unstemmed | A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case |
title_short | A Markov Chain Approach to Model Credit Rating Dynamics: Creditinfo Case |
title_sort | markov chain approach to model credit rating dynamics: creditinfo case |
topic | Tölfræði |
topic_facet | Tölfræði |
url | http://hdl.handle.net/1946/39936 |