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
Computational Intelligence (CI) is a computer science discipline encompassing the theory, design, de...
In this chapter, we review basic concepts from probability theory and computational statistics that ...
Motivation: Combinatorial effects, in which several variables jointly influence an output or respons...
The interest of statistical physics for combinatorial optimization is not new, it suffices to think ...
High-throughput measurement techniques have revolutionized the field of molecular biology by gearing...
Abstract: Combinatorial Optimization is a central sub-area in Operations Research that has found man...
The field of computational biology has seen dramatic growth over the past few years, both in terms o...
Recent advances in sequencing and synthesis technologies have sparked extraordinary growth in large-...
Systems biology studies complex systems which involve a large number of interacting entities such th...
An emerging research area in computational biology and biotechnology is devoted to mathematical mode...
The research of Gene Predicting Algorithms is a key section in bioinformatics. After brief introduct...
My graduate studies involved three broad classes of problems, each of which are presented in differen...
The emergence of the fields of computational biology and bioinformatics has alleviated the burden of...
tant for computational biology because these roles determine to a great extent how research in this ...
Computational Intelligence (CI) is a computer science discipline encompassing the theory, design, de...
Computational Intelligence (CI) is a computer science discipline encompassing the theory, design, de...
In this chapter, we review basic concepts from probability theory and computational statistics that ...
Motivation: Combinatorial effects, in which several variables jointly influence an output or respons...
The interest of statistical physics for combinatorial optimization is not new, it suffices to think ...
High-throughput measurement techniques have revolutionized the field of molecular biology by gearing...
Abstract: Combinatorial Optimization is a central sub-area in Operations Research that has found man...
The field of computational biology has seen dramatic growth over the past few years, both in terms o...
Recent advances in sequencing and synthesis technologies have sparked extraordinary growth in large-...
Systems biology studies complex systems which involve a large number of interacting entities such th...
An emerging research area in computational biology and biotechnology is devoted to mathematical mode...
The research of Gene Predicting Algorithms is a key section in bioinformatics. After brief introduct...
My graduate studies involved three broad classes of problems, each of which are presented in differen...
The emergence of the fields of computational biology and bioinformatics has alleviated the burden of...
tant for computational biology because these roles determine to a great extent how research in this ...
Computational Intelligence (CI) is a computer science discipline encompassing the theory, design, de...
Computational Intelligence (CI) is a computer science discipline encompassing the theory, design, de...
In this chapter, we review basic concepts from probability theory and computational statistics that ...
Motivation: Combinatorial effects, in which several variables jointly influence an output or respons...