In this thesis we made the first steps towards the systematic application of a methodology for automatically building formal models of complex biological systems. Such a methodology could be useful also to design artificial systems possessing desirable properties such as robustness and evolvability. The approach we follow in this thesis is to manipulate formal models by means of adaptive search methods called metaheuristics. In the first part of the thesis we develop state-of-the-art hybrid metaheuristic algorithms to tackle two important problems in genomics, namely, the Haplotype Inference by parsimony and the Founder Sequence Reconstruction Problem. We compare our algorithms with other effective techniques in the literature, we show st...
The interdisciplinary field of systems biology has evolved rapidly over the last few years. Differen...
AbstractAn effective exploration of the large search space by single population genetic-based metahe...
Haplotype Inference is a challenging problem in bioinformatics that consists in inferring the basic ...
Haplotype inference is a challenging problem in bioinformatics that consists in inferring the basic ...
Haplotype inference is a challenging problem in bioinformatics that consists in inferring the basic ...
AbstractThis paper presents a metaheuristic framework using Harmony Search (HS) with Genetic Algorit...
Metaheuristic algorithms are employed to solve complex and large-scale optimization problems in many...
AbstractEvolutionary theory states that stronger genetic characteristics reflect the organism’s abil...
For better understanding the mechanics of cellular control, many different approaches have been deve...
Rapporteurs : M. Sebag, DR CNRS, LRI, Orsay G. Venturini, Professeur, Ecole Polytechnique de Tours, ...
This thesis focuses on the topic of gene regulatory network inference and control based on the Boole...
This dissertation attempts to answer some of the vital questions involved in the genetic regulatory ...
Inferring the gene regulatory network (GRN) structure from data is an important problem in computati...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
The information in genomic or genetic data is influenced by various complex processes and appropriat...
The interdisciplinary field of systems biology has evolved rapidly over the last few years. Differen...
AbstractAn effective exploration of the large search space by single population genetic-based metahe...
Haplotype Inference is a challenging problem in bioinformatics that consists in inferring the basic ...
Haplotype inference is a challenging problem in bioinformatics that consists in inferring the basic ...
Haplotype inference is a challenging problem in bioinformatics that consists in inferring the basic ...
AbstractThis paper presents a metaheuristic framework using Harmony Search (HS) with Genetic Algorit...
Metaheuristic algorithms are employed to solve complex and large-scale optimization problems in many...
AbstractEvolutionary theory states that stronger genetic characteristics reflect the organism’s abil...
For better understanding the mechanics of cellular control, many different approaches have been deve...
Rapporteurs : M. Sebag, DR CNRS, LRI, Orsay G. Venturini, Professeur, Ecole Polytechnique de Tours, ...
This thesis focuses on the topic of gene regulatory network inference and control based on the Boole...
This dissertation attempts to answer some of the vital questions involved in the genetic regulatory ...
Inferring the gene regulatory network (GRN) structure from data is an important problem in computati...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
The information in genomic or genetic data is influenced by various complex processes and appropriat...
The interdisciplinary field of systems biology has evolved rapidly over the last few years. Differen...
AbstractAn effective exploration of the large search space by single population genetic-based metahe...
Haplotype Inference is a challenging problem in bioinformatics that consists in inferring the basic ...