Using machine learning methods, this chapter studies features that are important to predict corporate bond ratings. There is a growing literature of predicting credit ratings via machine learning methods. However, there have been less empirical studies using ensemble methods, which refer to the technique of combining the prediction of multiple classifiers. This chapter compares six machine learning models: ordered logit model (OL), neural network (NN), support vector machine (SVM), bagged decision trees (BDT), random forest (RF), and gradient boosted machines (GBMs). By providing an intuitive description for each employed method, this chapter may also serve as a primer for empirical researchers who want to learn machine learning methods. Mo...
Machine learning is becoming a part of everyday life and has an indisputable impact across large arr...
Credit rating is an ordinal categorical label that serves as an important measure of a financial in...
Credit risk modeling has carried a variety of research interest in previous literature, and recent s...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
One of the core functions of a financial institution is the credit risk management and one of the mo...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
Title: Machine Learning for Credit Scoring Author: Elena Myazina Department / Institute: Department ...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
The big data revolution and recent advancements in computing power have increased the interest in cr...
Since incorrect decisions can have detrimental effects on financial institutions, the possibility fo...
Credit scores are critical for financial sector investors and government officials, so it is importa...
We develop a new credit risk model for Indian debt securities rated by major credit rating agencies ...
Recently, machine learning has been put into connection with a field called ,,Big Data'' more and mo...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
Machine learning is becoming a part of everyday life and has an indisputable impact across large arr...
Credit rating is an ordinal categorical label that serves as an important measure of a financial in...
Credit risk modeling has carried a variety of research interest in previous literature, and recent s...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
One of the core functions of a financial institution is the credit risk management and one of the mo...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
Title: Machine Learning for Credit Scoring Author: Elena Myazina Department / Institute: Department ...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
The big data revolution and recent advancements in computing power have increased the interest in cr...
Since incorrect decisions can have detrimental effects on financial institutions, the possibility fo...
Credit scores are critical for financial sector investors and government officials, so it is importa...
We develop a new credit risk model for Indian debt securities rated by major credit rating agencies ...
Recently, machine learning has been put into connection with a field called ,,Big Data'' more and mo...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
Machine learning is becoming a part of everyday life and has an indisputable impact across large arr...
Credit rating is an ordinal categorical label that serves as an important measure of a financial in...
Credit risk modeling has carried a variety of research interest in previous literature, and recent s...