In this paper, we study mid-cap companies, i.e. publicly traded companies with less than US$10 billion in market capitalisation. Using a large dataset of US mid-cap companies observed over 30 years, we look to predict the default probability term structure over the short to medium term and understand which data sources (i.e. fundamental, market or pricing data) contribute most to the default risk. Whereas existing methods typically require that data from different time periods are first aggregated and turned into cross-sectional features, we frame the problem as a multi-label panel data classification problem. To tackle it, we then employ transformer models, a state-of-the-art deep learning model emanating from the natural language processi...
Abstract—In this paper, a loan default prediction model is constricted using three different trainin...
In this study, we analyze the term structure of credit default swaps (CDSs) and predict future term ...
This master thesis explore the potential of Machine Learning techniques in predicting default of ve...
In this paper, we study mid-cap companies, i.e. publicly traded companies with less than US $10 bill...
This thesis identifies the optimal set of corporate default drivers and examines the prediction perf...
In the literature of predicting corporate default, it is an ad-hoc process to select the predictors ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
Default has recently upraised as an excessive concern due to the recent world crisis. Early forecast...
This paper attempts to evaluate the predictive ability of three default prediction models: the marke...
Academics and practitioners have studied over the years models for predicting firms bankruptcy, usin...
This thesis consists of three applications of machine learning techniques to risk management. The fi...
Increasing interest in credit risk modeling necessitates empirical validation of the numerous theore...
International audienceDue to the advanced technology associated with Big Data, data availability and...
Proper credit-risk management is essential for lending institutions, as substantial losses can be in...
Abstract—In this paper, a loan default prediction model is constricted using three different trainin...
In this study, we analyze the term structure of credit default swaps (CDSs) and predict future term ...
This master thesis explore the potential of Machine Learning techniques in predicting default of ve...
In this paper, we study mid-cap companies, i.e. publicly traded companies with less than US $10 bill...
This thesis identifies the optimal set of corporate default drivers and examines the prediction perf...
In the literature of predicting corporate default, it is an ad-hoc process to select the predictors ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Predicting corporate bankruptcy is one of the fundamental tasks in credit risk assessment. In partic...
Default has recently upraised as an excessive concern due to the recent world crisis. Early forecast...
This paper attempts to evaluate the predictive ability of three default prediction models: the marke...
Academics and practitioners have studied over the years models for predicting firms bankruptcy, usin...
This thesis consists of three applications of machine learning techniques to risk management. The fi...
Increasing interest in credit risk modeling necessitates empirical validation of the numerous theore...
International audienceDue to the advanced technology associated with Big Data, data availability and...
Proper credit-risk management is essential for lending institutions, as substantial losses can be in...
Abstract—In this paper, a loan default prediction model is constricted using three different trainin...
In this study, we analyze the term structure of credit default swaps (CDSs) and predict future term ...
This master thesis explore the potential of Machine Learning techniques in predicting default of ve...