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Analysis of the impact of using different diversity functions for the subgroup discovery algorithm NMEEF-SD

机译:分析使用不同分集函数对子组发现算法NMEEF-SD的影响

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A main purpose of a multi-objective evolutionary algorithm is to find a good relationship between convergence and diversity of the population. Convergence guides the algorithm to search the optimal solution and diversity tries to avoid a premature stagnation of the search. In multi-objective evolutionary algorithms, diversity has been promoted using different techniques. In this paper, several diversity functions were implemented in NMEEF-SD, an algorithm for the extraction of fuzzy rules in a subgroup discovery task, to analyse the influence of these functions in the evolutionary process. The results show the advantages of the different measures, depending on the intended objective.
机译:多目标进化算法的主要目的是在种群的收敛性和多样性之间找到良好的关系。收敛指导算法搜索最佳解,而多样性则试图避免搜索过早停滞。在多目标进化算法中,使用不同的技术促进了多样性。本文在NMEEF-SD中实现了几种分集功能,这是一种在子组发现任务中提取模糊规则的算法,以分析这些功能在进化过程中的影响。结果显示了不同措施的优势,具体取决于预期目标。

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