This cumulative dissertation summarizes and discusses six research articles that are either published in academic journals and conference proceedings or submitted for review. The topics described are cross-disciplinary and can be allocated to Accounting, Finance, and Information Systems Research. In Accounting, we analyze the methodological differences between ratings and lifetime default risk to develop a proof for the use of rating changes for the determination of significant increases in credit risk in accordance to the impairment requirements of the International Financial Reporting Standards. Our results and findings contribute to more transparency with regard to decision-relevant information for stakeholders of financial statements. I...
We develop a novel stress-test framework to monitor systemic risk in financial systems. The modular ...
A pervasive challenge for decision-makers is evaluating data of varying form (e.g., quantitative vs....
Machine learning (ML) has revolutionised data analysis over the past decade. Like innumerous other i...
A solid credit risk management in corporations is key to minimize financial risk. Due to the fourth ...
The thesis presents my work on the modelling, explanation and prediction of credit risk through thre...
The volume Credit scoring in context of interpretable machine learning presents a unique, and simult...
Since the recent financial crisis of late 2008, several global regulatory authorities have collabora...
Abstract: Consumer credit risk analysis plays a significant role in stabilizing a bank’s investments...
For decades, there have been developments of computer software to support human decision making. Alo...
Since the recent financial crisis of late 2008, several global regulatory authorities have collabora...
We apply polytomous response logit models to investigate financial distress and bankruptcy across th...
The dissertation at hand focuses on the role of accounting in the aftermath of the 2007-2009 financi...
Using a sample of 23,218 company-year observations of listed companies during the period 1980–2011, ...
This book focuses on the alternative techniques and data leveraged for credit risk, describing and a...
Nowadays, the three major credit risks at banks and financial institutions are effective in various ...
We develop a novel stress-test framework to monitor systemic risk in financial systems. The modular ...
A pervasive challenge for decision-makers is evaluating data of varying form (e.g., quantitative vs....
Machine learning (ML) has revolutionised data analysis over the past decade. Like innumerous other i...
A solid credit risk management in corporations is key to minimize financial risk. Due to the fourth ...
The thesis presents my work on the modelling, explanation and prediction of credit risk through thre...
The volume Credit scoring in context of interpretable machine learning presents a unique, and simult...
Since the recent financial crisis of late 2008, several global regulatory authorities have collabora...
Abstract: Consumer credit risk analysis plays a significant role in stabilizing a bank’s investments...
For decades, there have been developments of computer software to support human decision making. Alo...
Since the recent financial crisis of late 2008, several global regulatory authorities have collabora...
We apply polytomous response logit models to investigate financial distress and bankruptcy across th...
The dissertation at hand focuses on the role of accounting in the aftermath of the 2007-2009 financi...
Using a sample of 23,218 company-year observations of listed companies during the period 1980–2011, ...
This book focuses on the alternative techniques and data leveraged for credit risk, describing and a...
Nowadays, the three major credit risks at banks and financial institutions are effective in various ...
We develop a novel stress-test framework to monitor systemic risk in financial systems. The modular ...
A pervasive challenge for decision-makers is evaluating data of varying form (e.g., quantitative vs....
Machine learning (ML) has revolutionised data analysis over the past decade. Like innumerous other i...