Whether for institutional investors or individual investors, there is an urgent need to explore autonomous models that can adapt to the non-stationary, low-signal-to-noise markets. This research aims to explore the two unique challenges in quantitative portfolio management: (1) the difficulty of representation and (2) the complexity of environments. In this research, we suggest a Markov decision process model-based deep reinforcement learning model including deep learning methods to perform strategy optimization, called SwanTrader. To achieve better decisions of the portfolio-management process from two different perspectives, i.e., the temporal patterns analysis and robustness information capture based on market observations, we suggest an...
Abstract The process of continuously reallocating funds into financial assets, aiming to increase th...
The global financial market comes to a new crisis in 2020 triggered by the COVID-19 pandemic. During...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
In the past decade, the application of deep reinforcement learning (DRL) in portfolio management has...
The rapid democratization of computing resources and advancements in data science have enabled the d...
In this thesis, we develop machine learning frameworks that are suitable for algorithmic trading, wh...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
Machine learning is increasingly gaining applications in Finance industry. In this dissertation, I u...
Market exposed assets like stocks yield higher return than cash but have higher risk, while cash-equ...
Trading strategies to maximize profits by tracking and responding to dynamic stock market variations...
This thesis addresses practical, real-world problems in the financial services industry using Deep L...
Abstract. – With globalization, the capital markets have exploded in size and value, making them exc...
The fixed income market (i.e. bonds) is a massive asset class with an overall size of USD 100 trilli...
Fluctuating nature of the stock market makes it too hard to predict the future market trends and whe...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Abstract The process of continuously reallocating funds into financial assets, aiming to increase th...
The global financial market comes to a new crisis in 2020 triggered by the COVID-19 pandemic. During...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
In the past decade, the application of deep reinforcement learning (DRL) in portfolio management has...
The rapid democratization of computing resources and advancements in data science have enabled the d...
In this thesis, we develop machine learning frameworks that are suitable for algorithmic trading, wh...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
Machine learning is increasingly gaining applications in Finance industry. In this dissertation, I u...
Market exposed assets like stocks yield higher return than cash but have higher risk, while cash-equ...
Trading strategies to maximize profits by tracking and responding to dynamic stock market variations...
This thesis addresses practical, real-world problems in the financial services industry using Deep L...
Abstract. – With globalization, the capital markets have exploded in size and value, making them exc...
The fixed income market (i.e. bonds) is a massive asset class with an overall size of USD 100 trilli...
Fluctuating nature of the stock market makes it too hard to predict the future market trends and whe...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Abstract The process of continuously reallocating funds into financial assets, aiming to increase th...
The global financial market comes to a new crisis in 2020 triggered by the COVID-19 pandemic. During...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...