In this paper, we present a portfolio optimization strategy based on a novel approach in assets clustering on the financial background of the Arbitrage Pricing Theory, a well-known multi-factor model. In particular, our aim is to exploit data analysis tools, such as the techniques of features extraction and feature selection, to group assets that exhibit a significant exposition to the same risk factors. Then, we exploit the clustering to build a market-neutral portfolio and, more in general, an investment methodology that takes into account the peculiarities of the specific market. Finally, we apply our methodology in various case studies, discussing the results obtained and highlighting the strengths and the limits of the proposed strateg...
In this work we use explorative statistical and data mining methods for financial applications like ...
One of the key role of a portfolio manager is to identify a suitable asset allocation strategy. The ...
We replicate and extend the adversarial expert based learning approach of Györfi et al to the situat...
In this paper, we present a portfolio optimization strategy based on a novel approach in assets clus...
In this paper, we propose a novel approach in stock clustering with the purpose of the construction ...
Prices of assets (stocks, commodities etc.) are dependent on many economic factors. These factors ma...
In general portfolio, optimization is a technique for selecting the proportion of assets to make a b...
Machine learning has been gaining momentum and has been applied in various fields including finance ...
Portfolio management and asset selection are important issues in the financial domain. Portfolio com...
In general portfolio optimization is a technique for selecting the proportion of assets to make a be...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
Modern methods for classification analysis involve processes for “learning” to correctly assign elem...
We consider the problem of the statistical uncertainty of the correlation matrix in the optimization...
Financial markets provide platforms where businesses can gather funds from individual investors and ...
This thesis introduces three variable clustering methods designed in the context of diversified port...
In this work we use explorative statistical and data mining methods for financial applications like ...
One of the key role of a portfolio manager is to identify a suitable asset allocation strategy. The ...
We replicate and extend the adversarial expert based learning approach of Györfi et al to the situat...
In this paper, we present a portfolio optimization strategy based on a novel approach in assets clus...
In this paper, we propose a novel approach in stock clustering with the purpose of the construction ...
Prices of assets (stocks, commodities etc.) are dependent on many economic factors. These factors ma...
In general portfolio, optimization is a technique for selecting the proportion of assets to make a b...
Machine learning has been gaining momentum and has been applied in various fields including finance ...
Portfolio management and asset selection are important issues in the financial domain. Portfolio com...
In general portfolio optimization is a technique for selecting the proportion of assets to make a be...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
Modern methods for classification analysis involve processes for “learning” to correctly assign elem...
We consider the problem of the statistical uncertainty of the correlation matrix in the optimization...
Financial markets provide platforms where businesses can gather funds from individual investors and ...
This thesis introduces three variable clustering methods designed in the context of diversified port...
In this work we use explorative statistical and data mining methods for financial applications like ...
One of the key role of a portfolio manager is to identify a suitable asset allocation strategy. The ...
We replicate and extend the adversarial expert based learning approach of Györfi et al to the situat...