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Learning Network Flow Based on Rough Set Flow Graphs and ACO Clustering in Distributed Cognitive Environments

机译:分布式认知环境中基于粗糙集流图和ACO聚类的学习网络流

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This paper presents the use of a modified collective behavior strategy of ant colonies to find approximate sets in the multi-objective optimization problem. The currently used methods search for non-dominated solutions, which takes place directly on the basis of definitions in the previously generated finite set of admissible ratings, searching in the space of goals by analyzing active constraints, solving optimization tasks in terms of all subsequent individual optimization criteria and adopting optimization criteria in order to form a substitute criterion of optimization in the form of a combination of linear criteria with appropriately selected weighting factors. However, these methods are ineffective in many cases. Therefore, the authors of the article propose a new approach based on the use of rough sets flow graphs to control the strategy of communicating artificial ants in distributed cognitive environments. The use of this approach allows to maximize the number of generated solutions and finding non-dominated solutions for the multiple objectives.
机译:本文提出了一种改进的蚁群集体行为策略,以在多目标优化问题中寻找近似集。当前使用的方法搜索非主导解决方案,该解决方案直接基于先前生成的可允许等级的有限集合中的定义进行,通过分析活动约束在目标空间中进行搜索,并针对所有后续个体解决优化任务优化准则,并采用优化准则,以形成线性准则与适当选择的加权因子的组合形式的替代优化准则。但是,这些方法在许多情况下无效。因此,本文的作者提出了一种基于粗糙集流程图来控制分布式认知环境中的人造蚂蚁交流策略的新方法。这种方法的使用允许最大化生成的解决方案的数量,并找到针对多个目标的非支配解决方案。

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