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Search Improvements via Multiple Recombination in Evolutionary Algorithms

机译:通过进化算法中的多重重组搜索改进

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Exploration and exploitation of solutions in the searching space are distinctive characteristics of an evolutionary algorithm (EA), which are responsible of success or failure of the search process. Extreme exploitation can lead to premature convergence and intense exploration can make the search ineffective. To find a balance between these two factors is of paramount importance for the EA performance when speed of the search and quality of results are involved. Many researchers focus this problem studying the effect of selection mechanisms, because selective pressure can adjust exploration and exploitation. Recombination has also its own contribution on this respect and depending on how it is applied can help or disrupt the searching process. A low rate for recombination can impede schema processing permitting super-individuals to cope the population and leading to premature convergence. On the other hand, a high rate can be, in some cases, too disruptive allowing good genetic material being lost, slowing the search. Two, relatively new, approaches, multiple crossovers per couple and multiparent recombination attempted to face the searching process under a new focus; multiplicity. Allowing multiple crossovers on the selected parents provided similar and better quality of solutions when contrasted against the conventional crossover (where one crossover operation is applied each time). Also an extra benefit, of saving processing time, was gained. Despite these benefits, due to a reinforcement of selective pressure, the multiple crossover method showed in some cases an undesirable premature convergence effect. To face this problem many approaches were undertaken and are explained here. Permitting multiple parents, offspring creation is based on a larger sample from the search space and therefor a larger diversity is supplied. This can help to prevent premature convergence. This paper briefly introduces both methods, discusses their motivations and describes improvements in performance on selected optimisation problems by using a new multiple crossovers on multiple parents (MCMP) method, which allows multiple crossovers between multiple parents to create multiple offspring.
机译:搜索空间中解决方案的探索和开发是一种进化算法(EA)的独特特征,其负责搜索过程的成功或失败。极端剥削可能导致过早融合和激烈的探索可以使搜索无效。在涉及搜索速度和结果的速度时,这两个因素之间的平衡对于EA性能至关重要。许多研究人员专注于研究选择机制的影响,因为选择性压力可以调整勘探和剥削。重组在这方面也有自己的贡献,具体取决于它的应用方式如何帮助或扰乱搜索过程。重组的低速率可以妨碍允许超级个体来应对群体并导致过早收敛的模式加工。另一方面,在某些情况下,高速度也可以是过于破坏性的,允许良好的遗传物质丢失,减慢搜索。两个,相对较新的,方法,每对夫妇的多次交叉和多种重组试图在新的焦点下面对搜索过程;多重。允许在与传统交叉造影(每次施加一个交叉操作)时提供相似且更好地质量的解决方案上的多个交叉。获得了额外的好处,可以获得节省处理时间。尽管有这些益处,由于选择性压力的加强,在某些情况下,多个交叉方法显示出不希望的过早收敛效果。面对这个问题,在此进行了许多方法。允许多个父母,后代创建基于来自搜索空间的更大的样本,并且提供更大的分集。这有助于防止过早收敛。本文简要介绍了这两种方法,讨论了它们的动机,并通过在多个父母(MCMP)方法上使用新的多个横梁来描述所选优化问题的性能的改进,这允许多个父母之间的多个交叉引发多个后代。

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