International audienceAnytime algorithms for optimization problems are of particular interest since they allow to trade off execution time with result quality. However, the selection of the best anytime algorithm for a given problem instance has been focused on a particular budget for execution time or particular target result quality. Moreover, it is often assumed that these anytime preferences are known when developing or training the algorithm selection methodology. In this work, we study the algorithm selection problem in a context where the decision maker's anytime preferences are defined by a general utility function, and only known at the time of selection. To this end, we first examine how to measure the performance of an anytime al...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
International audienceAlgorithm portfolios are known to offer robust performances, efficiently overc...
AbstractAnytime algorithms offer a tradeoff between solution quality and computation time that has p...
International audienceAnytime algorithms allow a practitioner to trade-off runtime for solution qual...
In multiobjective optimization, the result of an optimization algorithm is a set of efficient soluti...
International audienceAnytime performance assessment of black-box optimization algorithms assumes th...
Abstract Optimisation algorithms with good anytime behaviour try to return as high-quality solutions...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be u...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Feature selection is used to improve performance of learning algorithms by finding a minimal subset ...
It has long been observed that for practically any computational problem that has been intensely stu...
This paper presents a new anytime search algorithm, anytime explicitestimation search (AEES). AEES i...
Comunicació presentada a: the 26th AAAI Conference on Artificial Intelligence, celebrada a Toronto,...
International audienceRandomized search heuristics (e.g., evolutionary algorithms, simulated anneali...
Colloque avec actes et comité de lecture. internationale.International audienceWe describe in this p...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
International audienceAlgorithm portfolios are known to offer robust performances, efficiently overc...
AbstractAnytime algorithms offer a tradeoff between solution quality and computation time that has p...
International audienceAnytime algorithms allow a practitioner to trade-off runtime for solution qual...
In multiobjective optimization, the result of an optimization algorithm is a set of efficient soluti...
International audienceAnytime performance assessment of black-box optimization algorithms assumes th...
Abstract Optimisation algorithms with good anytime behaviour try to return as high-quality solutions...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be u...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Feature selection is used to improve performance of learning algorithms by finding a minimal subset ...
It has long been observed that for practically any computational problem that has been intensely stu...
This paper presents a new anytime search algorithm, anytime explicitestimation search (AEES). AEES i...
Comunicació presentada a: the 26th AAAI Conference on Artificial Intelligence, celebrada a Toronto,...
International audienceRandomized search heuristics (e.g., evolutionary algorithms, simulated anneali...
Colloque avec actes et comité de lecture. internationale.International audienceWe describe in this p...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
International audienceAlgorithm portfolios are known to offer robust performances, efficiently overc...
AbstractAnytime algorithms offer a tradeoff between solution quality and computation time that has p...