info:eu-repo/semantics/article
Machine Learning for Personal Credit Evaluation: A Systematic Review
Fecha
2022-07-01Autor
Cano Chuqui, Jorge
Ogosi Auqui, José Antonio
Guadalupe Mori, Víctor Hugo
Obando Pacheco, David Hugo
Institución
Resumen
The importance of information in today's world as it is a key asset for business growth and
innovation. The problem that arises is the lack of understanding of knowledge quality properties, which leads to
the development of inefficient knowledge-intensive systems. But knowledge cannot be shared effectively
without effective knowledge-intensive systems. Given this situation, the authors must analyze the benefits and
believe that machine learning can benefit knowledge management and that machine learning algorithms can
further improve knowledge-intensive systems. It also shows that machine learning is very helpful from a
practical point of view. Machine learning not only improves knowledge-intensive systems but has powerful
theoretical and practical implementations that can open up new areas of research. The objective set out is the
comprehensive and systematic literature review of research published between 2018 and 2022, these studies
were extracted from several critically important academic sources, with a total of 73 short articles selected. The
findings also open up possible research areas for machine learning in knowledge management to generate a
competitive advantage in financial institutions.