In online algorithm selection (OAS), instances of an algorithmic problem class are presented to an agent one after another, and the agent has to quickly select a presumably best algorithm from a fixed set of candidate algorithms. For decision problems such as satisfiability (SAT), quality typically refers to the algorithm's runtime. As the latter is known to exhibit a heavy-tail distribution, an algorithm is normally stopped when exceeding a predefined upper time limit. As a consequence, machine learning methods used to optimize an algorithm selection strategy in a data-driven manner need to deal with right-censored samples, a problem that has received little attention in the literature so far. In this work, we revisit multi-armed bandit al...
Summarization: Many computational problems can be solved by multiple algorithms, with different algo...
We propose a novel technique for algorithm-selection, applicable to optimisation domains in which th...
Much of modern learning theory has been split between two regimes: the classical offline setting, wh...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
Algorithm selection can be performed using a model of runtime distribution, learned during a prelimi...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
Most online algorithms used in machine learning today are based on vari-ants of mirror descent or fo...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
With an ever increasing demand on large scale data, difficulties exist in terms of processing and ut...
We propose a novel technique for algorithm-selection, applicable to optimisation domains in which th...
Many computational problems can be solved by multiple algorithms, with different algorithms fastest ...
We propose a novel technique for algorithm-selection, applicable to optimisation domains in which th...
The bandit classification problem considers learning the labels of a time-indexed data stream under ...
In this work, we address the combinatorial optimization problem in the stochastic bandit setting wit...
Summarization: Many computational problems can be solved by multiple algorithms, with different algo...
We propose a novel technique for algorithm-selection, applicable to optimisation domains in which th...
Much of modern learning theory has been split between two regimes: the classical offline setting, wh...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
Algorithm selection can be performed using a model of runtime distribution, learned during a prelimi...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
Most online algorithms used in machine learning today are based on vari-ants of mirror descent or fo...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
With an ever increasing demand on large scale data, difficulties exist in terms of processing and ut...
We propose a novel technique for algorithm-selection, applicable to optimisation domains in which th...
Many computational problems can be solved by multiple algorithms, with different algorithms fastest ...
We propose a novel technique for algorithm-selection, applicable to optimisation domains in which th...
The bandit classification problem considers learning the labels of a time-indexed data stream under ...
In this work, we address the combinatorial optimization problem in the stochastic bandit setting wit...
Summarization: Many computational problems can be solved by multiple algorithms, with different algo...
We propose a novel technique for algorithm-selection, applicable to optimisation domains in which th...
Much of modern learning theory has been split between two regimes: the classical offline setting, wh...