We present CGO-AS, a generalized Ant System (AS) implemented in the framework of Cooperative Group Optimization (CGO), to show the leveraged optimization with a mixed individual and social learning. Ant colony is a simple yet efficient natural system for understanding the effects of primary intelligence on optimization. However, existing AS algorithms are mostly focusing on their capability of using social heuristic cues while ignoring their individual learning. CGO can integrate the advantages of a cooperative group and a low-level algorithm portfolio design, and the agents of CGO can explore both individual and social search. In CGO-AS, each ant (agent) is added with an individual memory, and is implemented with a novel search strategy to use individual and social cues in a controlled proportion. The presented CGO-AS is therefore especially useful in exposing the power of the mixed individual and social learning for improving optimization. The optimization performance is tested with instances of the Traveling Salesman Problem (TSP). The results prove that a cooperative ant group using both individual and social learning obtains a better performance than the systems solely using either individual or social learning. The best performance is achieved under the condition when agents use individual memory as their primary information source, and simultaneously use social memory as their searching guidance. In comparison with existing AS systems, CGO-AS retains a faster learning speed toward those higher-quality solutions, especially in the later learning cycles. The leverage in optimization by CGO-AS is highly possible due to its inherent feature of adaptively maintaining the population diversity in the individual memory of agents, and of accelerating the learning process with accumulated knowledge in the social memory.
翻译:我们介绍了CGO-AS,这是一个在合作小组优化框架内实施的普遍的Ant系统(AS),以显示利用个人和社会混合学习的杠杆优化;Ant Crown是一个简单而高效的自然系统,以了解初级智能对优化的影响;然而,现有的AS算法主要侧重于他们利用社会疲劳暗示而忽视个人学习的能力;CGO可以结合合作小组和低级别算法组合设计的好处,CGO的代理人可以探索个人和社会搜索;在CGO-AS中,每种蚂蚁(代理)都添加个人记忆,并采用新颖的搜索战略,以使用个人和社会线索对优化的影响;但是,现有的CGO-AS的功能主要是暴露他们利用混合个人和社会学习的实力;优化业绩通过旅行推销员问题(TSP)的事例测试;结果证明,使用个人和社会学习的Atroup组比系统取得比系统更好的业绩,仅使用个人或社会学习的个体或社会学习周期;在C-AAS的积累过程中,通过个人学习的快速学习方式,在C-SAS的进度中,在个人学习中,在个人学习中,在个人学习的进度中,在个人学习中,在C-AAS的先进学习过程中,在个人学习的进度中,最晚的成绩中,在个人学习的成绩中,在C-la。