Estimating Vertex Measures in Social Networks by Sampling Completions of RDS Trees.

Bilal Khan, Kirk Dombrowski, Ric Curtis, Travis Wendel
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引用次数: 1

Abstract

This paper presents a new method for obtaining network properties from incomplete data sets. Problems associated with missing data represent well-known stumbling blocks in Social Network Analysis. The method of "estimating connectivity from spanning tree completions" (ECSTC) is specifically designed to address situations where only spanning tree(s) of a network are known, such as those obtained through respondent driven sampling (RDS). Using repeated random completions derived from degree information, this method forgoes the usual step of trying to obtain final edge or vertex rosters, and instead aims to estimate network-centric properties of vertices probabilistically from the spanning trees themselves. In this paper, we discuss the problem of missing data and describe the protocols of our completion method, and finally the results of an experiment where ECSTC was used to estimate graph dependent vertex properties from spanning trees sampled from a graph whose characteristics were known ahead of time. The results show that ECSTC methods hold more promise for obtaining network-centric properties of individuals from a limited set of data than researchers may have previously assumed. Such an approach represents a break with past strategies of working with missing data which have mainly sought means to complete the graph, rather than ECSTC's approach, which is to estimate network properties themselves without deciding on the final edge set.

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利用RDS树的抽样补全估计社会网络中的顶点测度。
本文提出了一种从不完全数据集获取网络属性的新方法。与缺失数据相关的问题是社交网络分析中众所周知的绊脚石。“从生成树补全中估计连通性”(ECSTC)的方法是专门设计用于解决只有已知网络生成树的情况,例如通过应答驱动抽样(RDS)获得的生成树。利用从度信息派生的重复随机补全,该方法放弃了通常试图获得最终边或顶点名单的步骤,而是旨在从生成树本身概率地估计顶点的网络中心属性。在本文中,我们讨论了缺失数据的问题,并描述了我们的补全方法的协议,最后给出了一个实验的结果,在这个实验中,我们使用了从一个预先知道特征的图中采样的生成树来估计图相关的顶点属性。结果表明,与研究人员之前的假设相比,欣喜若狂的方法在从有限的数据集中获得个体的网络中心特性方面更有希望。这种方法代表了与过去处理缺失数据的策略的突破,这些策略主要是寻求完成图的方法,而不是狂喜的方法,这是在不决定最终边缘集的情况下估计网络属性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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