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Sample Complexity of Real-Coded Evolutionary Algorithms

机译:实数编码进化算法的样本复杂度

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Researchers studying Evolutionary Algorithms and their applications have always been confronted with the sample complexity problem. The relationship between population size and global convergence is not clearly understood. Population size is usually chosen depending on researcher's experience. In this paper, we study the population size using Probably Approximately Correct (PAC) learning theory. A ruggedness measure for fitness functions is defined. A sampling theorem that theoretically determines an appropriate population size towards effective convergence is proposed. Preliminary experiments show that the initial population of the proposed size provides good starting point(s) for searching the solution space and thus leads to finding global optima.
机译:研究进化算法及其应用的研究人员一直面临样本复杂性问题。人口规模与全球趋同之间的关系尚不清楚。通常根据研究人员的经验来选择人口规模。在本文中,我们使用大概近似正确(PAC)学习理论研究人口规模。定义了适合度函数的耐用性度量。提出了一个采样定理,该定理从理论上确定了朝有效收敛的适当人口规模。初步实验表明,建议大小的初始种群为搜索解空间提供了一个良好的起点,从而导致找到全局最优值。

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