The thin-file borrowers are customers for whom a creditworthiness assessment is uncertain due to their lack of credit history; many researchers have used borrowers' relationships and interactions networks in the form of graphs as an alternative data source to address this. Incorporating network data is traditionally made by hand-crafted feature engineering, and lately, the graph neural network has emerged as an alternative, but it still does not improve over the traditional method's performance. Here we introduce a framework to improve credit scoring models by blending several Graph Representation Learning methods: feature engineering, graph embeddings, and graph neural networks. We stacked their outputs to produce a single score in this ap...
The most basic task in credit scoring is to classify potential borrowers as "good" or "bad" based on...
This research aimed at the case of credit scoring in risk management and presented the novel method ...
Over the last couple of years, we have seen much advancement in mathematical analysis and computatio...
Decisions to extend credit to potential customers are complex, risky and even potentially catastroph...
Banks need to develop effective credit scoring models to better understand the relationship between ...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
Motivated by the growing practice of using social network data in credit scoring, we analyze the imp...
For financial institutions and the economy at large, the role of credit scoring in lending decisions...
The big data revolution and recent advancements in computing power have increased the interest in cr...
Credit scoring is important for credit risk evaluation and monitoring in the accounting and finance ...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
While emerging economies have seen an explosion of social network site (SNS) adoption, these countri...
The failure or success of the banking industry depends largely on the industrys ability to properly ...
The most basic task in credit scoring is to classify potential borrowers as "good" or "bad" based on...
This research aimed at the case of credit scoring in risk management and presented the novel method ...
Over the last couple of years, we have seen much advancement in mathematical analysis and computatio...
Decisions to extend credit to potential customers are complex, risky and even potentially catastroph...
Banks need to develop effective credit scoring models to better understand the relationship between ...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
Motivated by the growing practice of using social network data in credit scoring, we analyze the imp...
For financial institutions and the economy at large, the role of credit scoring in lending decisions...
The big data revolution and recent advancements in computing power have increased the interest in cr...
Credit scoring is important for credit risk evaluation and monitoring in the accounting and finance ...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
While emerging economies have seen an explosion of social network site (SNS) adoption, these countri...
The failure or success of the banking industry depends largely on the industrys ability to properly ...
The most basic task in credit scoring is to classify potential borrowers as "good" or "bad" based on...
This research aimed at the case of credit scoring in risk management and presented the novel method ...
Over the last couple of years, we have seen much advancement in mathematical analysis and computatio...