Agric. Econ. - Czech, 2017, 63(8):347-355 | DOI: 10.17221/374/2015-AGRICECON

Predicting financial distress of agriculture companies in EUOriginal Paper

Václav KLEPAC*, David HAMPEL
Department of Statistics and Operation Analysis, Mendel University, Brno, Czech Republic

The objective of this paper is the prediction of financial distress (default of payment or insolvency) of 250 agriculture business companies in the EU from which 62 companies defaulted in 2014 with respect to lag of the used attributes. From many types of classification models, there was chosen the Logistic regression, the Support vector machines method with the RBF ANOVA kernel, the Decision Trees and the Adaptive Boosting based on the decision trees to acquire the best results. From the results, it is obvious that with the increasing distance to the bankruptcy, there decreases the average accuracy of the financial distress prediction and there is a greater difference between the active and distressed companies in terms of liquidity, rentability and debt ratios. The Decision trees and Adaptive Boosting offer a better accuracy for the distress prediction than the SVM and logit methods, what is comparable to the previous studies. From the total of 15 accounting variables, there were constructed classification trees by the Decision Trees with the inner feature selection method for the better visualization, what reduces the full data set only to 1 or 2 attributes: ROA and Long-term Debt to Total Assets Ratio in 2011, ROA and Current Ratio in 2012, ROA in 2013 for the discrimination of the distressed companies.

Keywords: agribusiness, classification, constrains, decision tree, default, nonlinear techniques, support vector machines

Published: August 31, 2017  Show citation

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KLEPAC V, HAMPEL D. Predicting financial distress of agriculture companies in EU. Agric. Econ. - Czech. 2017;63(8):347-355. doi: 10.17221/374/2015-AGRICECON.
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