This dissertation presents a number of contributions to the field of solver portfolios, in particular for combinatorial search problems. We propose a novel hierarchical portfolio which does not rely on a single problem representation, but may transform the problem to an alternate representation using a portfolio of encodings, additionally a portfolio of solvers is employed for each of the representations. We extend this multi-representation portfolio for discrete optimisation tasks in the graphical models domain, realising a portfolio which won the UAI 2014 Inference Competition. We identify a fundamental flaw in empirical evaluations of many portfolio and runtime prediction methods. The fact that solvers exhibit a runtime distribution has ...
International audienceHybrid optimisation methods using machine learning tools are a hot topic in co...
International audienceHybrid optimisation methods using machine learning tools are a hot topic in co...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...
This dissertation presents a number of contributions to the field of solver portfolios, in particula...
Most studies related to parallel and portfolio search for solving combinatorial problems, such as th...
International audienceMost studies related to parallel and portfolio search for solving combinatoria...
International audienceMost studies related to parallel and portfolio search for solving combinatoria...
International audienceMost studies related to parallel and portfolio search for solving combinatoria...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
AbstractStochastic algorithms are among the best methods for solving computationally hard search and...
Different solvers for computationally difficult problems such as satisfiability (SAT) perform best o...
We present an approach for improving the performance of combinatorial optimization algorithms by ge...
This paper aims to predict optimal solutions for combinatorial optimization problems (COPs) via mach...
Contemporary research in building optimization models and designing algorithms has become more data-...
Given the complexity and range of combinatorial optimization problems, solving them can be computati...
International audienceHybrid optimisation methods using machine learning tools are a hot topic in co...
International audienceHybrid optimisation methods using machine learning tools are a hot topic in co...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...
This dissertation presents a number of contributions to the field of solver portfolios, in particula...
Most studies related to parallel and portfolio search for solving combinatorial problems, such as th...
International audienceMost studies related to parallel and portfolio search for solving combinatoria...
International audienceMost studies related to parallel and portfolio search for solving combinatoria...
International audienceMost studies related to parallel and portfolio search for solving combinatoria...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
AbstractStochastic algorithms are among the best methods for solving computationally hard search and...
Different solvers for computationally difficult problems such as satisfiability (SAT) perform best o...
We present an approach for improving the performance of combinatorial optimization algorithms by ge...
This paper aims to predict optimal solutions for combinatorial optimization problems (COPs) via mach...
Contemporary research in building optimization models and designing algorithms has become more data-...
Given the complexity and range of combinatorial optimization problems, solving them can be computati...
International audienceHybrid optimisation methods using machine learning tools are a hot topic in co...
International audienceHybrid optimisation methods using machine learning tools are a hot topic in co...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...