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The Usability Argument for Refinement Typed Genetic Programming

机译:细化类型遗传规划的可用性争论

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The performance of Evolutionary Algorithms is frequently hindered by arbitrarily large search spaces. In order to overcome this challenge, domain-specific knowledge is often used to restrict the representation or evaluation of candidate solutions to the problem at hand. Due to the diversity of problems and the unpredictable performance impact, the encoding of domain-specific knowledge is a frequent problem in the implementation of evolutionary algorithms. We propose the use of Refinement Typed Genetic Programming, an enhanced hybrid of Strongly Typed Genetic Programming (STGP) and Grammar-Guided Genetic Programming (GGGP) that features an advanced type system with polymorphism and dependent and refined types. We argue that this approach is more usable for describing common problems in machine learning, optimisation and program synthesis, due to the familiarity of the language (when compared to GGGP) and the use of a unifying language to express the representation, the phenotype translation, the evaluation function and the context in which programs are executed.
机译:进化算法的性能经常受到任意大的搜索空间的阻碍。为了克服这一挑战,通常使用特定领域的知识来限制对当前问题的候选解决方案的表示或评估。由于问题的多样性和不可预测的性能影响,特定领域知识的编码是实现进化算法时经常遇到的问题。我们建议使用细化类型遗传编程,它是强类型遗传编程(STGP)和语法指导的遗传编程(GGGP)的增强混合体,其特征是具有多态性以及从属类型和细化类型的高级类型系统。我们认为,由于该语言的熟悉程度(与GGGP相比)以及使用统一语言来表达表示,表型翻译,评估功能和执行程序的环境。

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