Author
Listed:
- Rony Mitra
- Ayush Dongre
- Piyush Dangare
- Adrijit Goswami
- Manoj Kumar Tiwari
Abstract
Micro, Small, and Medium-sized Enterprises (MSMEs) are essential for the growth and development of the country's economy, as they create jobs, generate income, and foster production and innovation. In recent years, credit risk assessment (CRA) has been an essential process used by financial institutions to evaluate the creditworthiness of MSMEs and determine the likelihood of default. Traditionally, CRA has relied on credit scores and financial statements, but with the advent of machine learning (ML) algorithms, lenders have a new tool at their disposal. By and large, ML algorithms are designed to classify borrowers based on their credit history and transactional data while leveraging the entity relationship involved in credit transactions. This study introduces an innovative knowledge graph-driven credit risk assessment model (RGCN-RF) based on the Relational Graph Convolutional Network (RGCN) and Random Forest (RF) algorithm. RGCN is employed to identify topological structures and relationships, which is currently nascent in traditional credit risk assessment methods. RF categorises MSMEs based on the enterprise embedding vector generated from RGCN. Extensive experimentation is conducted to assess model performance utilising the Indian MSMEs database. The balanced accuracy of 92% obtained using the RGCN-RF model demonstrates a considerable advancement over prior techniques in identifying risk-free enterprises.
Suggested Citation
Rony Mitra & Ayush Dongre & Piyush Dangare & Adrijit Goswami & Manoj Kumar Tiwari, 2024.
"Knowledge graph driven credit risk assessment for micro, small and medium-sized enterprises,"
International Journal of Production Research, Taylor & Francis Journals, vol. 62(12), pages 4273-4289, June.
Handle:
RePEc:taf:tprsxx:v:62:y:2024:i:12:p:4273-4289
DOI: 10.1080/00207543.2023.2257807
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