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CONTROLLING AN ANT COLONY OPTIMIZATION BASED SEARCH IN DISTRIBUTED DATASETS

机译:在分布式数据集中控制基于蚁群优化的搜索

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An ant colony optimization method for searching in (possibly dynamic and/or unstructured) distributed datasets, as introduced by Jovanovic et.al [1], is considered. This paper provides two new results. Firstly, it describes how this method can easily be controlled by using different kinds of ants for aggregation of data found: "classic" pheromone aggregation ants should be used if network load caused by a distributed search should be strictly kept within given limits, while one-time aggregation ants should be used if the search process should react quickly due to changes in a dynamic distributed dataset. Secondly, it demonstrates that one-time aggregation ants are more effective than pheromone aggregation ants.
机译:如Jovanovic等人[1]所介绍的,考虑了一种用于搜索(可能是动态的和/或非结构化的)分布式数据集的蚁群优化方法。本文提供了两个新结果。首先,它描述了如何通过使用不同种类的蚂蚁对发现的数据进行聚合来轻松控制此方法:如果应将分布式搜索所引起的网络负载严格控制在给定的限制内,则应使用“经典”信息素聚合蚂蚁。如果搜索过程由于动态分布式数据集的变化而迅速做出反应,则应使用时间聚集蚂蚁。其次,它表明一次性聚集蚂蚁比信息素聚集蚂蚁更有效。

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