Predicting financial distress of JSE-Listed companies using Bayesian networks

This study aims to test the suitability of using Bayesian probabilistic models to predict bankruptcy of JSE-listed companies. A sample of 132 companies is considered with fourteen years of financial statement information and macroeconomic indicators used as predictor variables. Various permutations...

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Bibliographic Details
Main Author: Cassim, Ziyad
Other Authors: Kruger, Ryan
Format: Dissertation
Language:English
Published: University of Cape Town 2016
Subjects:
Online Access:http://hdl.handle.net/11427/20484
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spelling ndltd-netd.ac.za-oai-union.ndltd.org-uct-oai-localhost-11427-204842020-10-06T05:11:06Z Predicting financial distress of JSE-Listed companies using Bayesian networks Cassim, Ziyad Kruger, Ryan Actuarial Science This study aims to test the suitability of using Bayesian probabilistic models to predict bankruptcy of JSE-listed companies. A sample of 132 companies is considered with fourteen years of financial statement information and macroeconomic indicators used as predictor variables. Various permutations of Bayesian models are tested relating to different learning algorithms, intervals of discretisation and scoring metrics. In contrast to previous research, we explore a variety of evaluation measures and it is found that predictive accuracy for bankrupt firms does not exceed 70% in any model augmentation. On comparison to other popular models such as the Altman Z-score and the logit model, it is found that Bayesian networks produce marginally better predictive accuracy. Furthermore, a comparison to previous research on the same subject is carried and reasons for significantly different results are considered. Finally, the reasons for low predictive accuracies is considered with issues relating specifically to South Africa being discussed. 2016-07-20T06:56:47Z 2016-07-20T06:56:47Z 2016 Master Thesis Masters MPhil http://hdl.handle.net/11427/20484 eng application/pdf University of Cape Town Faculty of Commerce Division of Actuarial Science
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Actuarial Science
spellingShingle Actuarial Science
Cassim, Ziyad
Predicting financial distress of JSE-Listed companies using Bayesian networks
description This study aims to test the suitability of using Bayesian probabilistic models to predict bankruptcy of JSE-listed companies. A sample of 132 companies is considered with fourteen years of financial statement information and macroeconomic indicators used as predictor variables. Various permutations of Bayesian models are tested relating to different learning algorithms, intervals of discretisation and scoring metrics. In contrast to previous research, we explore a variety of evaluation measures and it is found that predictive accuracy for bankrupt firms does not exceed 70% in any model augmentation. On comparison to other popular models such as the Altman Z-score and the logit model, it is found that Bayesian networks produce marginally better predictive accuracy. Furthermore, a comparison to previous research on the same subject is carried and reasons for significantly different results are considered. Finally, the reasons for low predictive accuracies is considered with issues relating specifically to South Africa being discussed.
author2 Kruger, Ryan
author_facet Kruger, Ryan
Cassim, Ziyad
author Cassim, Ziyad
author_sort Cassim, Ziyad
title Predicting financial distress of JSE-Listed companies using Bayesian networks
title_short Predicting financial distress of JSE-Listed companies using Bayesian networks
title_full Predicting financial distress of JSE-Listed companies using Bayesian networks
title_fullStr Predicting financial distress of JSE-Listed companies using Bayesian networks
title_full_unstemmed Predicting financial distress of JSE-Listed companies using Bayesian networks
title_sort predicting financial distress of jse-listed companies using bayesian networks
publisher University of Cape Town
publishDate 2016
url http://hdl.handle.net/11427/20484
work_keys_str_mv AT cassimziyad predictingfinancialdistressofjselistedcompaniesusingbayesiannetworks
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