The portfolio selection problem is one of the most discussed topics in financial literature. Harry Markowitz (1952) is recognized as the first to formalize the risk-reward trade-off methodology used in portfolio selection. Through his mean-variance framework, he detailed the importance of diversification and laid the foundation for the modern portfolio theory we know today. This thesis explores a novel approach to portfolio allocation enabling the mean-variance framework and machine learning. We employ machine learning to predict the quarterly expected return and the associated covariance matrix for stocks trading on Oslo Stock Exchange. To construct the predictions, we deploy the renowned Extreme Gradient Boosting algorithm,...
Ever since stock trading came into force, financial economists are keen on identifying optimal metho...
In this research we aim to extend the literature on the performance predictability in actively manag...
This paper,Asset Allocation using Machine Learning, proposes a two step model, forecasting rst vol...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
We investigated and compared the performance of machine learning methods in the context of empirica...
I use machine learning stock return predictions to improve minimum variance and Sharpe ratio maximiz...
The thesis investigates the application of machine learning in portfolio con- struction. The analysi...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
The purpose of this thesis is to review and expand the main result in the paper by Daniel Kinn, "Red...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
This paper considers a portfolio trading strategy formulated by algorithms in the field of machine l...
We introduce a flexible utility-based empirical approach to directly determine asset allocation deci...
Abstract The paper analyzes a conceptual value investor behavior that uses stock fundamentals to pr...
This dissertation examines portfolio selection under systemic risk using performance measures. In th...
This study aims to examine what value Machine Learning algorithms give when trading from a long-term...
Ever since stock trading came into force, financial economists are keen on identifying optimal metho...
In this research we aim to extend the literature on the performance predictability in actively manag...
This paper,Asset Allocation using Machine Learning, proposes a two step model, forecasting rst vol...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
We investigated and compared the performance of machine learning methods in the context of empirica...
I use machine learning stock return predictions to improve minimum variance and Sharpe ratio maximiz...
The thesis investigates the application of machine learning in portfolio con- struction. The analysi...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
The purpose of this thesis is to review and expand the main result in the paper by Daniel Kinn, "Red...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
This paper considers a portfolio trading strategy formulated by algorithms in the field of machine l...
We introduce a flexible utility-based empirical approach to directly determine asset allocation deci...
Abstract The paper analyzes a conceptual value investor behavior that uses stock fundamentals to pr...
This dissertation examines portfolio selection under systemic risk using performance measures. In th...
This study aims to examine what value Machine Learning algorithms give when trading from a long-term...
Ever since stock trading came into force, financial economists are keen on identifying optimal metho...
In this research we aim to extend the literature on the performance predictability in actively manag...
This paper,Asset Allocation using Machine Learning, proposes a two step model, forecasting rst vol...