In this article, the authors construct a pipeline to benchmark hierarchical risk parity (HRP) relative to equal risk contribution (ERC) as examples of diversification strategies allocating to liquid multi-asset futures markets with dynamic leverage (volatility target). The authors use interpretable machine learning concepts (explainable AI) to compare the robustness of the strategies and to back out implicit rules for decision-making. The empirical dataset consists of 17 equity index, government bond, and commodity futures markets across 20 years. The two strategies are back tested for the empirical dataset and for about 100,000 bootstrapped datasets. XGBoost is used to regress the Calmar ratio spread between the two strategies against feat...
This thesis compares classic portfolio allocation techniques such as the Equally Weighted...
This paper,Asset Allocation using Machine Learning, proposes a two step model, forecasting rst vol...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...
International audienceWe investigate the use of machine learning (ML) to forecast stock returns in t...
In this article, the authors present a conceptual framework named adaptive seriational risk parity (...
In this article, the authors present a conceptual framework named 'Adaptive Seriational Risk Parity'...
This work proposes a novel portfolio management technique, the Meta Portfolio Method (MPM), inspired...
Machine learning is increasingly gaining applications in Finance industry. In this dissertation, I u...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
We perform a comparative analysis of machine learning methods for the canonical problemof empirical ...
We devise a hierarchical decision-making architecture for portfolio optimization on multiple markets...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
The thesis investigates the application of machine learning in portfolio con- struction. The analysi...
This thesis compares classic portfolio allocation techniques such as the Equally Weighted...
This paper,Asset Allocation using Machine Learning, proposes a two step model, forecasting rst vol...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...
International audienceWe investigate the use of machine learning (ML) to forecast stock returns in t...
In this article, the authors present a conceptual framework named adaptive seriational risk parity (...
In this article, the authors present a conceptual framework named 'Adaptive Seriational Risk Parity'...
This work proposes a novel portfolio management technique, the Meta Portfolio Method (MPM), inspired...
Machine learning is increasingly gaining applications in Finance industry. In this dissertation, I u...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
The portfolio selection problem is one of the most discussed topics in financial literature. Harry ...
In recent years, machine learning algorithms have been successfully employed to leverage the potenti...
We perform a comparative analysis of machine learning methods for the canonical problemof empirical ...
We devise a hierarchical decision-making architecture for portfolio optimization on multiple markets...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
The thesis investigates the application of machine learning in portfolio con- struction. The analysi...
This thesis compares classic portfolio allocation techniques such as the Equally Weighted...
This paper,Asset Allocation using Machine Learning, proposes a two step model, forecasting rst vol...
Machine Learning (ML) for finance is a fruitful approach to detect patterns in data. However, when i...