Average degree estimation under ego-centric sampling design

E. Çem, K. Saraç
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引用次数: 2

Abstract

Estimating the structural characteristics of large graphs from a sample is a classical problem. In this study, we propose asymptotically unbiased estimators for the average degree characteristic of a network under ego-centric sampling. In this sampling design, we first sample a number of vertices called ego vertices from the underlying graph and then obtain their ego-centric graph. Ego-centric graph of a sampled vertex is defined as the subgraph induced by the vertices within 1-hop neighborhood of the sampled ego vertex. We compare the proposed estimators with the estimator that do not utilize the neighborhood information using both real-world and synthetic large-scale graphs. The results show that utilization of the neighborhood information does not always increase the estimation accuracy depending on the sampling budget usage and the structure of the underlying graph.
自我中心抽样设计下的平均度估计
从样本中估计大图的结构特征是一个经典问题。在本研究中,我们提出了自我中心抽样下网络平均度特征的渐近无偏估计。在这个采样设计中,我们首先从底层图中采样一些被称为自我顶点的顶点,然后获得它们的自我中心图。采样顶点的自我中心图定义为采样顶点的1跳邻域内的顶点所诱发的子图。我们将提出的估计器与不利用邻域信息的估计器进行比较,使用真实世界和合成大规模图。结果表明,邻域信息的利用并不总是提高估计精度,这取决于抽样预算的使用和底层图的结构。
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