Denoising autoencoder genetic programming: strategies to control exploration and exploitation in search

IF 1.7 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
David Wittenberg, Franz Rothlauf, Christian Gagné
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引用次数: 1

Abstract

Abstract Denoising autoencoder genetic programming (DAE-GP) is a novel neural network-based estimation of distribution genetic programming approach that uses denoising autoencoder long short-term memory networks as a probabilistic model to replace the standard mutation and recombination operators of genetic programming. At each generation, the idea is to capture promising properties of the parent population in a probabilistic model and to use corruption to transfer variations of these properties to the offspring. This work studies the influence of corruption and sampling steps on search. Corruption partially mutates candidate solutions that are used as input to the model, whereas the number of sampling steps defines how often we re-use the output during model sampling as input to the model. We study the generalization of the royal tree problem, the Airfoil problem, and the Pagie-1 problem, and find that both corruption strength and the number of sampling steps influence exploration and exploitation in search and affect performance: exploration increases with stronger corruption and lower number of sampling steps. The results indicate that both corruption and sampling steps are key to the success of the DAE-GP: it permits us to balance the exploration and exploitation behavior in search, resulting in an improved search quality. However, also selection is important for exploration and exploitation and should be chosen wisely.

Abstract Image

去噪自编码器遗传规划:搜索中控制探索和开发的策略
摘要去噪自编码器遗传规划(DAE-GP)是一种基于神经网络估计的分布遗传规划方法,它以去噪自编码器长短期记忆网络作为概率模型来取代遗传规划中标准的突变和重组算子。在每一代,这个想法是在一个概率模型中捕捉亲代群体的有希望的属性,并利用腐败将这些属性的变化传递给后代。这项工作研究了腐败和采样步骤对搜索的影响。损坏部分地改变了用作模型输入的候选解决方案,而采样步骤的数量定义了我们在模型采样期间重用输出作为模型输入的频率。我们研究了御树问题、翼型问题和Pagie-1问题的推广,发现腐败强度和采样步数都会影响搜索中的探索和开发,并影响性能:腐败程度越强,采样步数越少,探索次数越高。结果表明,腐败和采样步骤都是DAE-GP成功的关键:它允许我们在搜索中平衡探索和利用行为,从而提高搜索质量。然而,选择对于探索和开发也很重要,应该明智地选择。
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来源期刊
Genetic Programming and Evolvable Machines
Genetic Programming and Evolvable Machines 工程技术-计算机:理论方法
CiteScore
5.90
自引率
3.80%
发文量
19
审稿时长
6 months
期刊介绍: A unique source reporting on methods for artificial evolution of programs and machines... Reports innovative and significant progress in automatic evolution of software and hardware. Features both theoretical and application papers. Covers hardware implementations, artificial life, molecular computing and emergent computation techniques. Examines such related topics as evolutionary algorithms with variable-size genomes, alternate methods of program induction, approaches to engineering systems development based on embryology, morphogenesis or other techniques inspired by adaptive natural systems.
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