Analysis of Methods for Generating Classification Rules Applicable to Credit Risk

  1. Patricia Jimbo Santana 1
  2. Augusto Villa Monte 2
  3. Enzo Rucci 2
  4. Laura Lanzarini 2
  5. Aurelio Fernández Bariviera 3
  1. 1 Universidad Central del Ecuador
    info

    Universidad Central del Ecuador

    Quito, Ecuador

    ROR https://ror.org/010n0x685

  2. 2 Universidad Nacional de La Plata
    info

    Universidad Nacional de La Plata

    La Plata, Argentina

    ROR https://ror.org/01tjs6929

  3. 3 Universitat Rovira i Virgili
    info

    Universitat Rovira i Virgili

    Tarragona, España

    ROR https://ror.org/00g5sqv46

Revista:
Journal of Computer Science and Technology

ISSN: 1666-6038

Año de publicación: 2017

Volumen: 17

Número: 1

Páginas: 20-28

Tipo: Artículo

Otras publicaciones en: Journal of Computer Science and Technology

Resumen

Credit risk is defined as the probability of loss due to non-compliance by the borrower with the required payments in relation to any type of debt. When financial institutions select their customers correctly, they can reduce their credit risk. To achieve this, they use various classification methodologies to sort customers based on their risk, analyzing a set of variables such as reputation, leverage, income and so forth. The extensive analysis and processing of these variables is quite time-consuming, partly because the data to be analyzed are not homogeneous. In this paper, we present an alternative method that operates on nominal and numeric attributes, which allows obtaining a predictive model that uses a reduced set of classification rules aimed at reducing credit risk. When the number of rules used decreases, credit analysts need less time to make their decisions, which will also result in better customer service. The methodology proposed here was applied to two databases of the UCI repository and two real databases of Ecuadorian banks that grant various types of credit. The results obtained have been satisfactory. Finally, our conclusions are discussed and future research lines are suggested.