Jessica Rivero-Espinosa, D. Cuadra, Francisco Javier Calle-Gómez, P. I. Viñuela
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引用次数: 9
摘要
如今,社交网络正变得越来越重要。这样做的原因是,他们使人们之间的信息交流,在同一工作领域的人会面或与其他研究小组建立合作。为了管理社交网络并找到其中的人,通常将社交网络表示为图形,以人为节点,以人之间的关系为边。一旦这样做了,与任何人建立联系就需要搜索到他/她的人链,也就是说,在连接两个节点的图中搜索路径。本文提出了一种基于自然的搜索算法:嗅觉-蚁群优化(Sense of Smell - Ant Colony Optimization)。该算法在应用于大型图时,对经典蚁群算法进行了改进。
A bio-inspired algorithm for searching relationships in Social Networks
Nowadays the Social Networks are experiencing a growing importance. The reason of this is that they enable the information exchange among people, meeting people in the same field of work or establishing collaborations with other research groups. In order to manage social networks and to find people inside them, they are usually represented as graphs with persons as nodes and relationships between them as edges. Once this is done, establishing contact with anyone involves searching the chain of people to reach him/her, that is, the search of the path inside the graph which joins two nodes. In this paper, a new algorithm based on nature is proposed to realize this search: SoS-ACO (Sense of Smell - Ant Colony Optimization). This algorithm improves the classical ACO algorithm when it is applied in huge graphs.