Bet-and-run initialisation strategies have been experimentally shown to be beneficial on classical NP-complete problems such as the travelling salesperson problem and minimum vertex cover. We analyse the performance of a bet-and-run restart strategy, where k independent islands run in parallel for t1 iterations, after which the optimisation process continues on only the best-performing island. We define a family of pseudo-Boolean functions, consisting of a plateau and a slope, as an abstraction of real fitness landscapes with promising and deceptive regions. The plateau shows a high fitness, but does not allow for further progression, whereas the slope has a low fitness initially, but does lead to the global optimum. We show that bet-and-ru...
International audienceThat the initialization can have a significant impact on the performance of ev...
AbstractA toy optimisation problem is introduced which consists of a fitness gradient broken up by a...
In this article we study stochastic multistart methods for global optimization, which combine local ...
Bet-and-run initialisation strategies have been experimentally shown to be beneficial on classical N...
A common strategy for improving optimization algorithms is to restart the algorithm when it is belie...
<p><em><strong>Results of Bet-and-Run Strategies with Different Decision Makers on the Traveling Sal...
A commonly used strategy for improving optimization algorithms is to restart the algorithm when it i...
Restart strategies are commonly used for minimizing the computational cost of randomized algorithms,...
AbstractIn the first part of the paper we consider the problem of dynamically apportioning resources...
When for a difficult real-world optimisation problem no good problem-specific algorithm is available...
A decision maker observes the evolving state of the world while constantly trying to predict the nex...
The mathematical runtime analysis of evolutionary algorithms traditionally regards the time an algor...
© 2017 ACM. Selection hyper-heuristics are randomised search methodologies which choose and execute ...
International audienceWe used in the past a lot of computational power and human expertise for havin...
The paper uses dynamic programming to investigate when contestants should bank their current winning...
International audienceThat the initialization can have a significant impact on the performance of ev...
AbstractA toy optimisation problem is introduced which consists of a fitness gradient broken up by a...
In this article we study stochastic multistart methods for global optimization, which combine local ...
Bet-and-run initialisation strategies have been experimentally shown to be beneficial on classical N...
A common strategy for improving optimization algorithms is to restart the algorithm when it is belie...
<p><em><strong>Results of Bet-and-Run Strategies with Different Decision Makers on the Traveling Sal...
A commonly used strategy for improving optimization algorithms is to restart the algorithm when it i...
Restart strategies are commonly used for minimizing the computational cost of randomized algorithms,...
AbstractIn the first part of the paper we consider the problem of dynamically apportioning resources...
When for a difficult real-world optimisation problem no good problem-specific algorithm is available...
A decision maker observes the evolving state of the world while constantly trying to predict the nex...
The mathematical runtime analysis of evolutionary algorithms traditionally regards the time an algor...
© 2017 ACM. Selection hyper-heuristics are randomised search methodologies which choose and execute ...
International audienceWe used in the past a lot of computational power and human expertise for havin...
The paper uses dynamic programming to investigate when contestants should bank their current winning...
International audienceThat the initialization can have a significant impact on the performance of ev...
AbstractA toy optimisation problem is introduced which consists of a fitness gradient broken up by a...
In this article we study stochastic multistart methods for global optimization, which combine local ...