Among the evolutionary methods, one that is quite prominent is Genetic Programming, and, in recent years, a variant called Geometric Semantic Genetic Programming (GSGP) has shown to be successfully applicable to many real-world problems. Due to a peculiarity in its implementation, GSGP needs to store all the evolutionary history, i.e., all populations from the first one. We exploit this stored information to define a multi-generational selection scheme that is able to use individuals from older populations. We show that a limited ability to use "old" generations is actually useful for the search process, thus showing a zero-cost way of improving the performances of GSGP.
翻译:在进化方法中,一个相当突出的方法是基因方案,近年来,一个称为几何语义基因方案(GGP)的变体已经证明成功地适用于许多现实世界的问题,由于其实施中的特殊性,GGP需要储存所有进化历史,即第一种人的所有人口。我们利用这一储存的信息来界定一个能够利用老年人口个人的多代选择计划。我们表明,使用“老一代”的有限能力实际上对搜索过程有用,从而显示出一种改善GGP绩效的零成本方法。