聚类和学习高斯分布的连续优化

Qiang Lu, X. Yao
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引用次数: 86

摘要

自引入分布估计算法(EDA)以来,连续域的估计方法不断发展。最初,在建立概率模型时广泛使用单高斯分布,这在处理多模态函数时通常会误导搜索。一些研究人员后来利用聚类技术构建了利用混合概率分布的eda。但它们的算法在应用聚类之前都需要先验知识,这在现实生活中是不合理的。本文提出了两种新的连续优化eda,它们都将聚类技术引入到估计过程中,以打破单高斯分布假设。基于BGe度量的高斯网络聚类与估计算法和基于高斯分布的聚类与估计算法,不仅在用少量局部最优解优化多模态函数方面具有很大的优势,而且利用一种非常可靠的聚类技术——对手惩罚竞争学习,克服了聚类前需要先验知识的限制。这是eda第一次具有自动检测全局最优数量的能力。为了评估新算法的性能,我们进行了一系列实验。除了对一些多模态函数的改进外,根据没有免费的午餐理论,也显示了它们的弱点。
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Clustering and learning Gaussian distribution for continuous optimization
Since the Estimation of Distribution Algorithm (EDA) was introduced, different approaches in continuous domains have been developed. Initially, the single Gaussian distribution was broadly used when building the probabilistic models, which would normally mislead the search when dealing with multimodal functions. Some researchers later constructed EDAs that take advantage of mixture probability distributions by using clustering techniques. But their algorithms all need prior knowledge before applying clustering, which is unreasonable in real life. In this paper, two new EDAs for continuous optimization are proposed, both of which incorporate clustering techniques into estimation process to break the single Gaussian distribution assumption. The new algorithms, Clustering and Estimation of Gaussian Network Algorithm based on BGe metric and Clustering and Estimation of Gaussian Distribution Algorithm, not only show great advantage in optimizing multimodal functions with a few local optima, but also overcome the restriction of demanding prior knowledge before clustering by using a very reliable clustering technique, Rival Penalized Competitive Learning. This is the first time that EDAs have the ability to detect the number of global optima automatically. A set of experiments have been implemented to evaluate the performance of new algorithms. Besides the improvement over some multimodal functions, according to the No Free Lunch theory, their weak side is also showed.
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