Fr. 102.00

Machine Learning for Corporate Failure Prediction - An Empirical Study of South African Companies

English · Paperback / Softback

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Description

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Corporate failure is an essential component of an efficient market economy. It allows for the recycling of financial, human and physical resources into more productive organisations. However, many stakeholders, have an interest in the financial health of a firm, as the failure of the corporation can have a significant impact on the costs to all parties. Machine learning can broadly be defined as the field of study that concentrates on algorithms that have the ability to learn. This is in direct contrast to expert systems that are automated with a set of predetermined rules for the classification of the independent variable. Machine learning techniques are adept at finding potential solutions to highly complex problems. In this research, support vector machines and genetic algorithms were applied to the problem of corporate failure prediction (a complex, non-linear problem) with great effect. The book ends by showing, mathematically, the relationship between support vector machines and kernel ridge regression.

About the author










Saul is a qualified Chartered Accountant, Chartered Financial Analyst and has completed his Masters in intelligent pattern recognition techniques. He would prefer to be on a deserted island than at a computer.

Product details

Authors Saul Kornik
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 27.09.2012
 
EAN 9783847379652
ISBN 978-3-8473-7965-2
No. of pages 364
Subject Guides > Law, job, finance > Money, bank, stock market

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