This multidisciplinary thesis investigates the application of machine learning to financial time series analysis. The research is motivated by the following thesis question: ‘Can one improve upon the state of the art in financial time series analysis through the application of machine learning?’ The work is split according to the following time series trichotomy: 1) characterization — determine the fundamental properties of the time series; 2) modelling — find a description that accurately captures features of the long-term behaviour of the system; and 3) forecasting — accurately predict the short-term evolution of the system
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
The Capital Asset Pricing Model combined with the Sharpe ratio is a standard method for cho...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...
I, Tristan Fletcher, confirm that the work presented in this thesis is my own. Where information has...
Machine learning, as a subtopic of artificial intelligence, has powerfully been applied in multiple ...
The modernization of the financial market, with the introduction of the internet, made it easier for...
This thesis attempts to model and forecast realized volatility and stock market tail risk using hybr...
This article conducts a systematic comparison of three methods for predicting the direction (+/-) of...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
Technical and quantitative analysis in financial trading use mathematical and statistical tools to h...
One of the most sought-after but equally complex and thus challenging areas in financial markets is ...
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
Financial market forecasting is a challenging and complex task due to the sensitivity of the market ...
Financial time series forecasting is a popular application of machine learning methods. Previous stu...
<p>In the dynamic world of financial markets, accurate price predictions are essential for inf...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
The Capital Asset Pricing Model combined with the Sharpe ratio is a standard method for cho...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...
I, Tristan Fletcher, confirm that the work presented in this thesis is my own. Where information has...
Machine learning, as a subtopic of artificial intelligence, has powerfully been applied in multiple ...
The modernization of the financial market, with the introduction of the internet, made it easier for...
This thesis attempts to model and forecast realized volatility and stock market tail risk using hybr...
This article conducts a systematic comparison of three methods for predicting the direction (+/-) of...
The stock market is notoriously difficult to predict, but there are two schools of thought that make...
Technical and quantitative analysis in financial trading use mathematical and statistical tools to h...
One of the most sought-after but equally complex and thus challenging areas in financial markets is ...
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
Financial market forecasting is a challenging and complex task due to the sensitivity of the market ...
Financial time series forecasting is a popular application of machine learning methods. Previous stu...
<p>In the dynamic world of financial markets, accurate price predictions are essential for inf...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
The Capital Asset Pricing Model combined with the Sharpe ratio is a standard method for cho...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...