We investigated and compared the performance of machine learning methods in the context of empirical asset pricing. We used seven different algorithms and 83 firm characteristics, comparing the models’ monthly predictive accuracy and variable importance on Norwegian stock and accounting data. Additionally, we investigated the models’ ability to generate excess returns in monthly-rebalanced, long-short and long-only portfolios. We found that the XGBoost algorithm has the highest prediction accuracy of 53.16%, and that it more heavily weights momentum variables. Furthermore, we found excess risk-adjusted returns when constructing portfolios free of market frictions. A long-only portfolio with predictions from the XGBoost model outperf...
We perform a comparative analysis of machine learning methods for the canonical problemof empirical ...
I use machine learning stock return predictions to improve minimum variance and Sharpe ratio maximiz...
The stock market moves a large amount of wealth between individuals and institutions daily. Forty mi...
We investigated and compared the performance of machine learning methods in the context of empirical...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
This study aims to examine what value Machine Learning algorithms give when trading from a long-term...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
The unparalleled success of machine learning is indisputable. It has transformed the world with unim...
The unparalleled success of machine learning is indisputable. It has transformed the world with unim...
This dissertation studies the cross-section of asset returns. That is, why do certain assets receive...
Many of the sophisticated models for stock return forecasting and portfolio optimisation cannot beat...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
This master’s thesis investigated the predictive power of different machine learning models in the c...
We perform a comparative analysis of machine learning methods for the canonical problemof empirical ...
I use machine learning stock return predictions to improve minimum variance and Sharpe ratio maximiz...
The stock market moves a large amount of wealth between individuals and institutions daily. Forty mi...
We investigated and compared the performance of machine learning methods in the context of empirical...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
This study aims to examine what value Machine Learning algorithms give when trading from a long-term...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
The unparalleled success of machine learning is indisputable. It has transformed the world with unim...
The unparalleled success of machine learning is indisputable. It has transformed the world with unim...
This dissertation studies the cross-section of asset returns. That is, why do certain assets receive...
Many of the sophisticated models for stock return forecasting and portfolio optimisation cannot beat...
In this paper, I conduct a comprehensive study of using machine learning tools to forecast the U.S. ...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
This master’s thesis investigated the predictive power of different machine learning models in the c...
We perform a comparative analysis of machine learning methods for the canonical problemof empirical ...
I use machine learning stock return predictions to improve minimum variance and Sharpe ratio maximiz...
The stock market moves a large amount of wealth between individuals and institutions daily. Forty mi...