We present a comparative study of genetic algorithms and their search properties when treated as a combinatorial optimization technique. This is done in the context of the NP-hard problem MAX-SAT, the comparison being relative to the Metropolis process, and by extension, simulated annealing. Our contribution is two-fold. First, we show that for large and difficult MAX-SAT instances, the contribution of cross-over to the search process is marginal. Little is lost if it is dispensed altogether, running mutation and selection as an enlarged Metropolis process. Second, we show that for these problem instances, genetic search consistently performs worse than simulated annealing when subject to similar resource bounds. The correspondence between ...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
In this paper we show how the performance of two meta-heuristic algorithms and two simple search rou...
Abstract—We compare Genetic Algorithms (GA) with a functional search method, Very Fast Simulated Rea...
In this paper, we study the efficacy of genetic algorithms in the context of combinatorial optimizat...
The guided random search techniques, genetic algorithms and simulated annealing, are very promising ...
We briefly review previous attempts to generate near-optimal solutions of the Traveling Salesman Pro...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
Combinatorial optimization problems arise in many scientific and practical applications. Therefore m...
Abstract — The use of genetic algorithms was originally motivated by the astonishing success of thes...
Evolutionary algorithms are powerful techniques for optimisation whose operation principles are insp...
In this paper, we review parallel search techniques for approximating the global optimal solution of...
We describe the performance of two population based search algorithms (genetic algorithms and partic...
A genetic algorithm approach suitable for solving multi-objective optimization problems is described...
Evolutionary algorithms (EAs) are modern techniques for searching complex spaces for on optimum [11]...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
In this paper we show how the performance of two meta-heuristic algorithms and two simple search rou...
Abstract—We compare Genetic Algorithms (GA) with a functional search method, Very Fast Simulated Rea...
In this paper, we study the efficacy of genetic algorithms in the context of combinatorial optimizat...
The guided random search techniques, genetic algorithms and simulated annealing, are very promising ...
We briefly review previous attempts to generate near-optimal solutions of the Traveling Salesman Pro...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
This paper theoretically compares the performance of simulated annealing and evolutionary algorithms...
Combinatorial optimization problems arise in many scientific and practical applications. Therefore m...
Abstract — The use of genetic algorithms was originally motivated by the astonishing success of thes...
Evolutionary algorithms are powerful techniques for optimisation whose operation principles are insp...
In this paper, we review parallel search techniques for approximating the global optimal solution of...
We describe the performance of two population based search algorithms (genetic algorithms and partic...
A genetic algorithm approach suitable for solving multi-objective optimization problems is described...
Evolutionary algorithms (EAs) are modern techniques for searching complex spaces for on optimum [11]...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
In this paper we show how the performance of two meta-heuristic algorithms and two simple search rou...
Abstract—We compare Genetic Algorithms (GA) with a functional search method, Very Fast Simulated Rea...