首页> 外文会议>Genetic and Evolutionary Computation Conference Pt.1 Jul 12-16, 2003 Chicago, IL, USA >On the Optimization of Monotone Polynomials by the (1+1) EA and Randomized Local Search
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On the Optimization of Monotone Polynomials by the (1+1) EA and Randomized Local Search

机译:利用(1 + 1)EA和随机局部搜索优化单调多项式

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Randomized search heuristics like evolutionary algorithms and simulated annealing find many applications, especially in situations where no full information on the problem instance is available. In order to understand how these heuristics work, it is necessary to analyze their behavior on classes of functions. Such an analysis is performed here for the class of monotone pseudo-boolean polynomials. Results depending on the degree and the number of terms of the polynomial are obtained. The class of monotone polynomials is of special interest since simple functions of this kind can have an image set of exponential size, improvements can increase the Hamming distance to the optimum and, in order to find a better search point, it can be necessary to search within a large plateau of search points with the same fitness value.
机译:诸如进化算法和模拟退火之类的随机搜索启发式方法有很多应用,特别是在没有有关问题实例的完整信息的情况下。为了了解这些试探法是如何工作的,有必要分析它们在功能类别上的行为。这里针对单调伪布尔多项式的类别执行这种分析。获得取决于多项式的次数和项数的结果。单调多项式的类别特别受关注,因为这种简单函数可以具有指数大小的图像集,改进可以将汉明距离增加到最佳,并且为了找到更好的搜索点,可能有必要进行搜索在具有相同适应性值的大量搜索点内。

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