首页> 外文会议>Soft Computing and Pattern Recognition, 2009. SOCPAR '09 >A Novel Fuzzy Histogram Based Estimation of Distribution Algorithm for Global Numerical Optimization
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A Novel Fuzzy Histogram Based Estimation of Distribution Algorithm for Global Numerical Optimization

机译:一种基于模糊直方图的全局数值优化分配算法

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Applying Estimation of Distribution Algorithms (EDAs) to solve continuous problems is a significant and challenging task in the field of evolutionary computation. So far, various continuous EDAs have been developed based on different probability models. Initially, the EDAs based on a single Gaussian probability model are widely used but they have trouble in solving multimodal problems. Later EDAs based on a mixture model and on a clustering technique are then introduced to conquer such drawback. However, they are either time consuming or need prior knowledge of the problems. Recently, the histogram has begun to be used in continuous EDAs, but the histogram based EDAs (HEDAs) usually need too much time and space to gain a highly accurate solution. On the basis of pioneering contributions, this paper proposes a fuzzy histogram based EDA (FHEDA) for continuous optimization. In the FHEDA, the estimated range of the fuzzy histogram is adjusted adaptively by the current promising solutions, which leads the algorithm to search good solutions efficiently. A mutation mechanism is also introduced in the sampling operation to avoid being trapped in local optima. The performance of the proposed FHEDA is evaluated by testing seven benchmark functions with different characteristics. Two Gaussian based EDAs and the sur-shr-HEDA are studied for comparison. The results show that among all experimental algorithms, the FHEDA can give comparatively satisfying performance on unimodal and multimodal functions.
机译:应用分布算法估计(EDA)解决连续问题是进化计算领域中一项重大而具有挑战性的任务。到目前为止,已经基于不同的概率模型开发了各种连续的EDA。最初,基于单个高斯概率模型的EDA被广泛使用,但是它们在解决多峰问题时遇到了麻烦。随后引入了基于混合模型和聚类技术的后来的EDA,以克服这种缺陷。但是,它们要么很耗时,要么需要事先了解问题。最近,直方图已开始用于连续的EDA中,但是基于直方图的EDA(HEDA)通常需要太多的时间和空间才能获得高度精确的解决方案。在开拓性贡献的基础上,本文提出了一种基于模糊直方图的EDA(FHEDA)进行连续优化。在FHEDA中,模糊直方图的估计范围可以通过当前有希望的解决方案进行自适应调整,从而使算法可以有效地搜索良好的解决方案。采样操作中还引入了一种突变机制,以避免陷入局部最优状态。通过测试具有不同特征的七个基准功能来评估所提出的FHEDA的性能。为了进行比较,研究了两种基于高斯的EDA和sur-shr-HEDA。结果表明,在所有实验算法中,FHEDA都能在单峰和多峰函数上提供相对令人满意的性能。

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