The interest of statistical physics for combinatorial optimization is not new, it suffices to think of a famous tool as simulated annealing. Recently, it has also resorted to statistical inference to address some "hard" optimization problems, developing a new class of message passing algorithms. Three applications to computational biology are presented in this thesis, namely: 1) Boolean networks, a model for gene regulatory networks; 2) haplotype inference, to study the genetic information present in a population; 3) clustering, a general machine learning tool
High-throughput measurement techniques have revolutionized the field of molecular biology by gearing...
The recent explosion of high throughput technologies in many fields of biology has necessitated the ...
Network Theory is a prolific and lively field, especially when it approaches Biology. New concepts f...
The interest of statistical physics for combinatorial optimization is not new, it suffices to think ...
This thesis describes a path from a model of a biological system to a biologically-inspired algorith...
This thesis describes a path from a model of a biological system to a biologically-inspired algorith...
Modern biology is rapidly becoming a study of large sets of data. Understanding these data sets is a...
The prediction of proteins' conformation helps to understand their exhibited functions, a...
master thesisartificial intelligenceReal biological networks are able to make decisions. We will sho...
In recent years, we have witnessed an increasing cross-fertilization between the fields of computer ...
Nowadays in many statistical applications, we face models whose complexity increases with the sample...
The emergence of the fields of computational biology and bioinformatics has alleviated the burden of...
Biological systems are examples of complex systems, which consist of several interacting components....
International audienceFirst book that strikes a balance between biology and biomedicine on the one h...
Computational biology is an interdisciplinary field that applies the techniques of computer science,...
High-throughput measurement techniques have revolutionized the field of molecular biology by gearing...
The recent explosion of high throughput technologies in many fields of biology has necessitated the ...
Network Theory is a prolific and lively field, especially when it approaches Biology. New concepts f...
The interest of statistical physics for combinatorial optimization is not new, it suffices to think ...
This thesis describes a path from a model of a biological system to a biologically-inspired algorith...
This thesis describes a path from a model of a biological system to a biologically-inspired algorith...
Modern biology is rapidly becoming a study of large sets of data. Understanding these data sets is a...
The prediction of proteins' conformation helps to understand their exhibited functions, a...
master thesisartificial intelligenceReal biological networks are able to make decisions. We will sho...
In recent years, we have witnessed an increasing cross-fertilization between the fields of computer ...
Nowadays in many statistical applications, we face models whose complexity increases with the sample...
The emergence of the fields of computational biology and bioinformatics has alleviated the burden of...
Biological systems are examples of complex systems, which consist of several interacting components....
International audienceFirst book that strikes a balance between biology and biomedicine on the one h...
Computational biology is an interdisciplinary field that applies the techniques of computer science,...
High-throughput measurement techniques have revolutionized the field of molecular biology by gearing...
The recent explosion of high throughput technologies in many fields of biology has necessitated the ...
Network Theory is a prolific and lively field, especially when it approaches Biology. New concepts f...