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Biasing Bayesian Optimization Algorithm using Case Based Reasoning

机译:基于案例推理的有偏贝叶斯优化算法

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摘要

Studies show that application of the prior knowledge in biasing the Estimation of Distribution Algorithms (EDAs), such as Bayesian Optimization Algorithm (BOA), increases the efficiency of these algorithms significantly. One of the main advantages of the EDAs over other optimization algorithms is that the former provides a trail of probabilistic models of candidate solutions with increasing quality. Some recent studies have applied these probabilistic models, obtained from previously solved problems in biasing the BOA algorithm, to solve the future problems. In this paper, in order to improve the previous works and reduce their disadvantages, a method based on Case Based Reasoning (CBR) is proposed for biasing the BOA algorithm. Herein, after running BOA for solving optimization problems, each problem, the corresponding solution, as well as the last Bayesian network obtained from the BOA algorithm, will be stored as an entry in the case-base. Upon introducing a new problem, similar problems from the case-base are retrieved and the last Bayesian networks of these solved problems are combined according to the degree of their similarity with the new problem; hence, a compound Bayesian network is constructed. The compound Bayesian network is sampled and the initial population for the BOA algorithm is generated. This network will be applied efficiently for biasing future probabilistic models during the runs of BOA for the new problem. The proposed method is tested on three well-known combinatorial benchmark problems. Experimental results show significant improvements in algorithm execution time and quality of solutions, compared to previous methods.
机译:研究表明,先验知识在偏向分布算法(EDA)估计(例如贝叶斯优化算法(BOA))中的应用显着提高了这些算法的效率。与其他优化算法相比,EDA的主要优势之一是前者提供了质量提高的候选解决方案概率模型。最近的一些研究已经应用了这些概率模型来解决未​​来的问题,这些概率模型是从先前解决的BOA算法偏差中获得的。为了改进现有技术并减少其弊端,提出了一种基于案例推理(CBR)的BOA算法偏置算法。在此,运行BOA解决优化问题后,每个问题,相应的解决方案以及从BOA算法获得的最后一个贝叶斯网络都将作为条目存储在案例库中。引入新问题后,从案例库中检索类似问题,并根据与新问题的相似程度将这些已解决问题的最后贝叶斯网络进行组合;因此,构造了复合贝叶斯网络。采样复合贝叶斯网络,并生成BOA算法的初始种群。在BOA运行新问题时,该网络将有效地用于偏倚未来的概率模型。在三个众所周知的组合基准问题上测试了该方法。实验结果表明,与以前的方法相比,算法执行时间和解决方案质量有了显着改善。

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