This thesis consists of three applications of machine learning techniques to risk management. The first chapter proposes a deep learning approach to estimate physical forward default intensities of companies. Default probabilities are computed using artificial neural networks to estimate the intensities of the inhomogeneous Poisson processes governing default process. The major contribution to previous literature is to allow the estimation of non-linear forward intensities by using neural networks instead of classical maximum likelihood estimation. The model specification allows an easy replication of previous literature using linear assumption and shows the improvement that can be achieved. The second chapter, titled `Causal Networks with ...
In this paper, we develop new latent risk measures that are designed as a prior synthesis of key for...
The networked-loan is major financing support for Micro, Small and Medium-sized Enterprises (MSMEs) ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Financial researchers, who often work with large volumes of financial data, need efficient tools to ...
This thesis addresses practical, real-world problems in the financial services industry using Deep L...
Financial systemic risk is an important issue in economics and financial systems. Trying to detect ...
The paper examines the potential of deep learning to support decisions in financial risk management....
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
This article explores the application of advanced data analysis techniques in the financial sector u...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
The modern financial industry has been required to deal with large and diverse portfolios in a varie...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
Nowadays, Financial Markets represent a crucial part of the world economy. Financial Markets have gr...
The first part of this thesis discusses the application of artificial intelligence to stock price pr...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
In this paper, we develop new latent risk measures that are designed as a prior synthesis of key for...
The networked-loan is major financing support for Micro, Small and Medium-sized Enterprises (MSMEs) ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Financial researchers, who often work with large volumes of financial data, need efficient tools to ...
This thesis addresses practical, real-world problems in the financial services industry using Deep L...
Financial systemic risk is an important issue in economics and financial systems. Trying to detect ...
The paper examines the potential of deep learning to support decisions in financial risk management....
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
This article explores the application of advanced data analysis techniques in the financial sector u...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
The modern financial industry has been required to deal with large and diverse portfolios in a varie...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
Nowadays, Financial Markets represent a crucial part of the world economy. Financial Markets have gr...
The first part of this thesis discusses the application of artificial intelligence to stock price pr...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
In this paper, we develop new latent risk measures that are designed as a prior synthesis of key for...
The networked-loan is major financing support for Micro, Small and Medium-sized Enterprises (MSMEs) ...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...