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Reducing Bloat and Promoting Diversity using Multi-Objective Methods

机译:使用多目标方法减少膨胀并促进多样性

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摘要

Two important problems in genetic programming (GP) are its tendency to find unnecessarily large trees (bloat), and the general evolutionary algorithms problem that diversity in the population can be lost prematurely. The prevention of these problems is frequently an implicit goal of basic GP. We explore the potential of techniques from multi-objective optimization to aid GP by adding explicit objectives to avoid bloat and promote diversity. The even 3, 4, and 5-parity problems were solved efficiently compared to basic GP results from the literature. Even though only non-dominated individuals were selected and populations thus remained extremely small, appropriate diversity was maintained. The size of individuals visited during search consistently remained small, and solutions of what we believe to be the minimum size were found for the 3, 4, and 5-parity problems.
机译:遗传程序设计(GP)中的两个重要问题是其倾向于找到不必要的大树(膨胀)的趋势,以及一般的进化算法问题,即种群中的多样性可能会过早丧失。预防这些问题通常是基本GP的一个隐含目标。我们通过添加明确的目标来避免膨胀和促进多样性,探索了从多目标优化技术到GP的技术潜力。与文献中的基本GP结果相比,偶3、4和5奇偶校验问题得到了有效解决。即使只选择了非支配的个体,因此人口仍然极少,但仍保持了适当的多样性。在搜索过程中访问的个人人数始终保持较小,并且针对3、4和5奇偶校验问题找到了我们认为是最小人数的解决方案。

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