评估器固定结构学习自动机在社会网络抽样中的应用

S. Roohollahi, A. K. Bardsiri, F. Keynia
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引用次数: 6

摘要

社交网络是流的,多样化的,包括广泛的边缘,随着时间的推移不断发展,并由用户之间的活动(如推文,电子邮件等)形成,其中用户之间的每项活动都为网络图添加了一个边缘。尽管它们很受欢迎,但大多数社交网络的动态性和庞大的规模使得研究整个网络变得困难或不可能。本文提出了一种采样算法,该算法配备了用于分析边缘的评估器单元和一组简单的固定结构学习自动机。评估器单元评估每条边,然后决定是否将边和相应的节点添加到样本集中。在该算法中,每个主活动图节点都配备了一个简单的学习自动机。将该算法与目前在Kolmogorov-Smirnov测试(KS)中报道的最佳采样算法以及真实网络和合成网络中作为边序列呈现的归一化L1和L2距离进行了比较。实验结果表明了该算法的优越性。
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Using an Evaluator Fixed Structure Learning Automata in Sampling of Social Networks
Social networks are streaming, diverse and include a wide range of edges so that continuously evolves over time and formed by the activities among users (such as tweets, emails, etc.), where each activity among its users, adds an edge to the network graph. Despite their popularities, the dynamicity and large size of most social networks make it difficult or impossible to study the entire network. This paper proposes a sampling algorithm that equipped with an evaluator unit for analyzing the edges and a set of simple fixed structure learning automata. Evaluator unit evaluates each edge and then decides whether edge and corresponding node should be added to the sample set. In The proposed algorithm, each main activity graph node is equipped with a simple learning automaton. The proposed algorithm is compared with the best current sampling algorithm that was reported in the Kolmogorov-Smirnov test (KS) and normalized L1 and L2 distances in real networks and synthetic networks presented as a sequence of edges. Experimental results show the superiority of the proposed algorithm.
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