The Machines are Coming Non-parametric methods and bankruptcy prediction - An artificial neural network approach
Sammanfattning
Prediction of corporates bankruptcies is a topic that has gained more importance
in the last two decades. Improvement in data accessibility makes the topic of
bankruptcy prediction models a widely studied area. This study looks at bankruptcy
prediction from a non-parametric perspective, with a focus on artificial neural networks
(ANNs). Inspired by the classical work by Altman (1968) this study models
bankruptcies with classification techniques. Five different models - ANN, CART, k-
NN, LDA and QDA are applied to Swedish, German and French firm level datasets.
The study findings suggests the ANN method outperforms other methods with
86.49% prediction accuracy and struggles to separate the smallest companies in
the dataset from the defaulted ones. It is also shown that an increase in number of
hidden layers from 10 to 100 results in an increase of 1% in prediction accuracy but
the effect is non-linear.
Examinationsnivå
Master 2-years
Övrig beskrivning
MSc in Economics
Samlingar
Fil(er)
Datum
2016-09-09Författare
Demir, Ozan
Nyckelord
Bankruptcy prediction
machine learning
non-parametric methods
artificial neural networks.
Serie/rapportnr.
Master Degree Project
2016:91
Språk
eng