Schema survival rates and heuristic search in genetic algorithms

B. Buckles, F. Petry, R. Kuester
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引用次数: 32

Abstract

Genetic algorithms are a relatively new paradigm for search in artificial intelligence. It is shown that, for certain kinds of search problems, called permutation problems, the ordinary rule for intermixing the genes between two organisms leads to longer search chains than are necessary. A schema is a partially completed organism. Its order is the number of fixed components and its length is the distance between its first and last fixed component. A scheme is compact if its length and order are nearly equal. It is shown that the survival rate of a compact schema is directly proportional to the quality of the solution after a fixed number of iterations. The ordinary gene intermixing method called a crossover rule, separates the parents of a new organism at almost the precise point at which the compact scheme survival rate is at a minimum. A variation of the crossover rule is proposed that takes advantage of the knowledge of survival rates on the quality of the solution.<>
遗传算法中的模式存活率和启发式搜索
遗传算法是人工智能中一个相对较新的搜索范式。结果表明,对于某些类型的搜索问题(称为排列问题),在两个生物体之间混合基因的一般规则会导致比必要的更长的搜索链。图式是一个部分完成的有机体。它的顺序是固定分量的数量,它的长度是它的第一个和最后一个固定分量之间的距离。如果方案的长度和顺序几乎相等,则该方案是紧的。结果表明,经过固定次数的迭代后,紧凑模式的存活率与解决方案的质量成正比。普通的基因杂交方法被称为交叉法则,它将一个新生物体的亲本几乎精确地分离在紧凑方案存活率最小的点上。提出了交叉规则的一种变体,它利用了解的质量对存活率的了解。
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