Financial systemic risk is an important issue in economics and financial systems. Trying to detect and respond to systemic risk with growing amounts of data produced in financial markets and systems, a lot of researchers have increasingly employed machine learning methods. Machine learning methods study the mechanisms of outbreak and contagion of systemic risk in the financial network and improve the current regulation of the financial market and industry. In this paper, we survey existing researches and methodologies on assessment and measurement of financial systemic risk combined with machine learning technologies, including big data analysis, network analysis and sentiment analysis, etc. In addition, we identify future challenges...
Credit risk assessment is at the core of modern economies. Traditionally, it is measured by statisti...
In this PhD thesis we develop tools for exploring liquidity risk within banks or within the banking ...
This book introduces machine learning in finance and illustrates how we can use computational tools ...
This thesis consists of three applications of machine learning techniques to risk management. The fi...
A sound credit assessment mechanism has been explored for many years and is the key to internet fina...
It is well known that the interbank market is able to effectively provide financial liquidity for th...
Recent economic crises like the 2008 financial tsunami has demonstrated a critical need for better u...
Financial researchers, who often work with large volumes of financial data, need efficient tools to ...
There is an increasing influence of machine learning in business applications, with many solutions a...
Machine learning (ML) has revolutionised data analysis over the past decade. Like innumerous other i...
Systemic risk has become a widely observed and thoroughly researched topic in the years following th...
For decades, there have been developments of computer software to support human decision making. Alo...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
This thesis presents methodological contributions for the quantification of systemic risk in financi...
After the sub-prime mortgage crisis of 2007 and global crisis of 2008, credit risk analysis has beco...
Credit risk assessment is at the core of modern economies. Traditionally, it is measured by statisti...
In this PhD thesis we develop tools for exploring liquidity risk within banks or within the banking ...
This book introduces machine learning in finance and illustrates how we can use computational tools ...
This thesis consists of three applications of machine learning techniques to risk management. The fi...
A sound credit assessment mechanism has been explored for many years and is the key to internet fina...
It is well known that the interbank market is able to effectively provide financial liquidity for th...
Recent economic crises like the 2008 financial tsunami has demonstrated a critical need for better u...
Financial researchers, who often work with large volumes of financial data, need efficient tools to ...
There is an increasing influence of machine learning in business applications, with many solutions a...
Machine learning (ML) has revolutionised data analysis over the past decade. Like innumerous other i...
Systemic risk has become a widely observed and thoroughly researched topic in the years following th...
For decades, there have been developments of computer software to support human decision making. Alo...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
This thesis presents methodological contributions for the quantification of systemic risk in financi...
After the sub-prime mortgage crisis of 2007 and global crisis of 2008, credit risk analysis has beco...
Credit risk assessment is at the core of modern economies. Traditionally, it is measured by statisti...
In this PhD thesis we develop tools for exploring liquidity risk within banks or within the banking ...
This book introduces machine learning in finance and illustrates how we can use computational tools ...