Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) because the markets (the environment in which the GP solution must survive) are dynamic, unpredictable and unforgiving. How can GP be improved so that solutions are produced that are robust to non-trivial changes in the environment? We explore an approach that uses subsets of extreme environments during training
This research presents a specialised extension to the genetic algorithms (GA) known as the genetic p...
This paper investigates the performance of trading strategies identified through Computational Intel...
The original publication is available at www.springerlink.comOver the last decade, numerous papers h...
Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) beca...
This thesis presents three new genetic programming (GP) algorithms designed to enhance robustness of...
Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) bec...
This paper presents a Robust Genetic Programming approach for discovering profitable trading rules w...
Multiobjective (MO) optimisation is a useful technique for evolving portfolio optimisation solutions...
GAs (Genetic Algorithms) and GP (Genetic Programming) are investigated for finding robust Technical ...
International audienceGenetic Programming (GP) is an appealing machine-learning technique for tackli...
The original publication is available at www.springerlink.com ; ISBN 978-3-540-46484-6 ; ISSN 0302-9...
Tutorial given at CIEF'2006 - available at url http://www.loria.fr/~nnavetInternational audienceGene...
Dissertação de Mestrado em Engenharia Informática apresentada à Faculdade de Ciências e Tecnologia d...
Genetic programming (GP) is increasingly popular as a research tool for applications in finance and...
International audienceVolatility is a key variable in option pricing, trading, and hedging strategie...
This research presents a specialised extension to the genetic algorithms (GA) known as the genetic p...
This paper investigates the performance of trading strategies identified through Computational Intel...
The original publication is available at www.springerlink.comOver the last decade, numerous papers h...
Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) beca...
This thesis presents three new genetic programming (GP) algorithms designed to enhance robustness of...
Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) bec...
This paper presents a Robust Genetic Programming approach for discovering profitable trading rules w...
Multiobjective (MO) optimisation is a useful technique for evolving portfolio optimisation solutions...
GAs (Genetic Algorithms) and GP (Genetic Programming) are investigated for finding robust Technical ...
International audienceGenetic Programming (GP) is an appealing machine-learning technique for tackli...
The original publication is available at www.springerlink.com ; ISBN 978-3-540-46484-6 ; ISSN 0302-9...
Tutorial given at CIEF'2006 - available at url http://www.loria.fr/~nnavetInternational audienceGene...
Dissertação de Mestrado em Engenharia Informática apresentada à Faculdade de Ciências e Tecnologia d...
Genetic programming (GP) is increasingly popular as a research tool for applications in finance and...
International audienceVolatility is a key variable in option pricing, trading, and hedging strategie...
This research presents a specialised extension to the genetic algorithms (GA) known as the genetic p...
This paper investigates the performance of trading strategies identified through Computational Intel...
The original publication is available at www.springerlink.comOver the last decade, numerous papers h...