In recent years, machine learning algorithms have been successfully employed to leverage the potential of identifying hidden patterns of financial market behavior and, consequently, have become a land of opportunities for financial applications such as algorithmic trading. In this paper, we propose a statistical arbitrage trading strategy with two key elements: an ensemble of regression algorithms for asset return prediction, followed by a dynamic asset selection. More specifically, we construct an extremely heterogeneous ensemble ensuring model diversity by using state-of-the-art machine learning algorithms, data diversity by using a feature selection process, and method diversity by using individual models for each asset, as well models t...
The unpredictability and volatility of the stock market render it challenging to make a substantial ...
This paper considers a portfolio trading strategy formulated by algorithms in the field of machine l...
This dissertation examines portfolio selection under systemic risk using performance measures. In th...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
Machine learning techniques have recently become the norm for detecting patterns in financial market...
Statistical arbitrage exploits temporal price differences between similar assets. We develop a unify...
Financial markets forecasting represents a challenging task for a series of reasons, such as the irr...
International audienceMachine learning algorithms and big data are transforming all industries inclu...
Many of the sophisticated models for stock return forecasting and portfolio optimisation cannot beat...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
The main objective of this thesis is to analyze whether there are arbitrage opportunities on the No...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
We test a statistical arbitrage trading strategy, pairs trading, using daily closing prices covering...
The unpredictability and volatility of the stock market render it challenging to make a substantial ...
This paper considers a portfolio trading strategy formulated by algorithms in the field of machine l...
This dissertation examines portfolio selection under systemic risk using performance measures. In th...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
Nowadays, machine learning usage has gained significant interest in financial time series prediction...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
Machine learning techniques have recently become the norm for detecting patterns in financial market...
Statistical arbitrage exploits temporal price differences between similar assets. We develop a unify...
Financial markets forecasting represents a challenging task for a series of reasons, such as the irr...
International audienceMachine learning algorithms and big data are transforming all industries inclu...
Many of the sophisticated models for stock return forecasting and portfolio optimisation cannot beat...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
The main objective of this thesis is to analyze whether there are arbitrage opportunities on the No...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
We test a statistical arbitrage trading strategy, pairs trading, using daily closing prices covering...
The unpredictability and volatility of the stock market render it challenging to make a substantial ...
This paper considers a portfolio trading strategy formulated by algorithms in the field of machine l...
This dissertation examines portfolio selection under systemic risk using performance measures. In th...