IIESS   23418
INSTITUTO DE INVESTIGACIONES ECONOMICAS Y SOCIALES DEL SUR
Unidad Ejecutora - UE
artículos
Título:
Can the SOM Analysis Predict Business Failure Using Capital Structure Theory? Evidence from the Subprime Crisis in Spain
Autor/es:
SCHERGER, VALERIA; LUCANERA, JUAN PEDRO; VIGIER, HERNÁN; FABREGAT-AIBAR, LAURA
Revista:
Axioms
Editorial:
MDPI AG publishers
Referencias:
Año: 2020 vol. 9
Resumen:
The paper aims to identify which variables related to capital structure theory predict business failure in the Spanish construction sector during the subprime crisis. An artificial neural network (ANN) approach based on Self-Organizing Maps (SOM) is proposed, which allows one to cluster between default and active firms? groups. The similarities and differences between the main features in each group determine the variables that explain the capacities of failure of the analyzed firms. The network tests whether the factors that explain leverage, such as profitability, growth opportunities, size of the company, risk, asset structure, and age of the firm, can be suitable to predict business failure. The sample is formed by 152 construction firms (76 default and 76 active) in the Spanish market. The results show that the SOM correctly predicts 97.4% of firms in the construction sector and classifies the firms in five groups with clear similarities inside the clusters. The study proves the suitability of the SOM for predicting business bankruptcy situations using variables related to capital structure theory and financial crises