Abstract We describe theoretical results and empirical study of context-sensitive restart policies for randomized search procedures. The methods generalize previous results on optimal restart policies by exploiting dynamically updated beliefs about the probability distribution for run time. Rather than assuming complete knowledge or zero knowledge about the run-time distribution, we formulate restart policies that consider real-time observations about properties of instances and the solver's activity. We describe background work on the application of Bayesian methods to build predictive models for run time, introduce an optimal policy for dynamic restarts that considers predictions about run time, and perform a comparative study of tra...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
Restarts are used in many computer systems to improve performance. Examples include reloading a webp...
Abstract Recent statistical performance studies of search algorithms in difficult combinatorial prob...
The time required for a backtracking search procedure to solve a problem can be reduced by employin...
In this work we explore how the complexity of a problem domain affects the performance of evolutiona...
Local search (LS) and multi-agent-based search (ERA [1]) are stochastic and incomplete procedures fo...
Recent work has demonstrated that it is possible to boost the efficiency of combinatorial search pr...
International audienceMulti-Modal Optimization (MMO) is ubiquitous in engineer- ing, machine learnin...
Abstract Restart techniques for randomizing complete search algorithms were proposed recently by Sel...
Abstract. Constraint satisfaction and propositional satisfiability problems are often solved using b...
The mean running time of a Las Vegas algorithm can often be dramatically reduced by periodically res...
In this paper I describe experiments in the application of dynamic restarts used in heuristic satisf...
The field of dynamic optimisation continuously designs and compares algorithms with adaptation abili...
Restart strategies are commonly used for minimizing the computational cost of randomized algorithms,...
Restart—interrupting a stochastic process followed by a new start—is known to improve the mean time ...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
Restarts are used in many computer systems to improve performance. Examples include reloading a webp...
Abstract Recent statistical performance studies of search algorithms in difficult combinatorial prob...
The time required for a backtracking search procedure to solve a problem can be reduced by employin...
In this work we explore how the complexity of a problem domain affects the performance of evolutiona...
Local search (LS) and multi-agent-based search (ERA [1]) are stochastic and incomplete procedures fo...
Recent work has demonstrated that it is possible to boost the efficiency of combinatorial search pr...
International audienceMulti-Modal Optimization (MMO) is ubiquitous in engineer- ing, machine learnin...
Abstract Restart techniques for randomizing complete search algorithms were proposed recently by Sel...
Abstract. Constraint satisfaction and propositional satisfiability problems are often solved using b...
The mean running time of a Las Vegas algorithm can often be dramatically reduced by periodically res...
In this paper I describe experiments in the application of dynamic restarts used in heuristic satisf...
The field of dynamic optimisation continuously designs and compares algorithms with adaptation abili...
Restart strategies are commonly used for minimizing the computational cost of randomized algorithms,...
Restart—interrupting a stochastic process followed by a new start—is known to improve the mean time ...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
Restarts are used in many computer systems to improve performance. Examples include reloading a webp...
Abstract Recent statistical performance studies of search algorithms in difficult combinatorial prob...