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Performance Comparison of Sampling Techniques for Web-based Networks

机译:基于Web的网络采样技术的性能比较

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The gaining popularity of social networks is attracting a large number of researchers to study the behaviour and characteristics of social networks at a large scale. But it is difficult to capture full view of many social networks due to their large size and access limitations. Therefore, sampling techniques are essential to analyse Online Social Network's characteristics and behaviours. It is a challenging task to create a small but representative sample from a large social graph having millions of nodes. Many graph sampling algorithms have been proposed in past like BFS (Breadth First Search), DFS (Depth First Search), Snowball sampling, Random Walk sampling and their variations. In this paper, we evaluated the performance of Random Walk (RW) and Metropolis Hastings Random Walk (MHRW) algorithm on web-based network datasets. Evaluation is done on the basis of two parameters: average path length and average clustering coefficient. Our results show that MHRW technique performed better than RW technique for both the parameters.
机译:社交网络的越来越受欢迎是吸引大量研究人员,以大规模研究社交网络的行为和特征。但由于其大小和访问限制,很难捕捉许多社交网络的全视图。因此,采样技术对于分析在线社交网络的特征和行为是必不可少的。从具有数百万节点的大型社交图中创建一个少数但代表性的样本是一个具有挑战性的任务。许多图表采样算法已经过去像BFS(广度第一搜索),DFS(深度第一搜索),雪球采样,随机步行采样及其变化。在本文中,我们评估了随机游走(RW)和大都会黑斯廷斯随机游走(MHRW)在基于Web的网络数据集算法的性能。评估是在两个参数的基础上完成:平均路径长度和平均聚类系数。我们的结果表明,MHRW技术比参数的RW技术更好。

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