Portfolio managers and investors have to face the perils of the markets and the trade-off between risk and return. A common way to face this environment of uncertainty is to fix some trading rules in order to optimize the returns according to risk profile and investment horizon of each investor. Every market agent would like to predict with accuracy the future price of a stock, unfortunately the constant flow of qualitative information generates noise and distortions and make this unfeasible. In order to mitigate the uncertainty about returns, the investors can use the available historical data referred to a company and integrate efficiently quantitative information with the most recent qualitative data in a systematic way. We propo...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
This thesis focuses on the combination of agent based modelling and Bayesian network. These techniqu...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
Portfolio managers and investors have to face the perils of the markets and the trade-off between r...
The volume Computational Finance 1999 contains a selection of the papers presented at Computational ...
Gated Bayesian networks (GBNs) are an extension of Bayesian networks that aim to model systems that ...
In a competitive environment a proper evaluation of the financial status and performance of a firm ...
In order to model and explain the dynamics of the market, different types and sources of informatio...
We propose a systematic factor analysis approach using the Bayesian Network (BN) framework by taking...
This thesis explores the use of Bayesian networks to develop “views” for a Black-Litterman asset all...
Gated Bayesian networks (GBNs) are a recently introduced extension of Bayesian networks that aims to...
Abstract. Gated Bayesian networks (GBNs) are a recently introduced extension of Bayesian networks th...
Bayesian network is the graphical model which can represent the stochastic dependency of the random ...
Bayesian networks have grown to become a dominant type of model within the domain of probabilistic g...
We propose a systematic factor analysis approach using the Bayesian Network (BN) framework by taking...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
This thesis focuses on the combination of agent based modelling and Bayesian network. These techniqu...
Stock picking based on regularities in time series is one of the most studied topics in the financia...
Portfolio managers and investors have to face the perils of the markets and the trade-off between r...
The volume Computational Finance 1999 contains a selection of the papers presented at Computational ...
Gated Bayesian networks (GBNs) are an extension of Bayesian networks that aim to model systems that ...
In a competitive environment a proper evaluation of the financial status and performance of a firm ...
In order to model and explain the dynamics of the market, different types and sources of informatio...
We propose a systematic factor analysis approach using the Bayesian Network (BN) framework by taking...
This thesis explores the use of Bayesian networks to develop “views” for a Black-Litterman asset all...
Gated Bayesian networks (GBNs) are a recently introduced extension of Bayesian networks that aims to...
Abstract. Gated Bayesian networks (GBNs) are a recently introduced extension of Bayesian networks th...
Bayesian network is the graphical model which can represent the stochastic dependency of the random ...
Bayesian networks have grown to become a dominant type of model within the domain of probabilistic g...
We propose a systematic factor analysis approach using the Bayesian Network (BN) framework by taking...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
This thesis focuses on the combination of agent based modelling and Bayesian network. These techniqu...
Stock picking based on regularities in time series is one of the most studied topics in the financia...