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首页> 外文期刊>Journal of the American statistical association >Latent Surface Models for Networks Using Aggregated Relational Data
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Latent Surface Models for Networks Using Aggregated Relational Data

机译:使用聚合关系数据的网络潜在表面模型

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Despite increased interest across a range of scientific applications in modeling and understanding social network structure, collecting complete network data remains logistically and financially challenging, especially in the social sciences. This article introduces a latent surface representation of social network structure for partially observed network data. We derive a multivariate measure of expected (latent) distance between an observed actor and unobserved actors with given features. We also draw novel parallels between our work and dependent data in spatial and ecological statistics. We demonstrate the contribution of our model using a random digit-dial telephone survey and a multiyear prospective study of the relationship between network structure and the spread of infectious disease. The model proposed here is related to previous network models which represents high-dimensional structure through a projection to a low-dimensional latent geometric surface-encoding dependence as distance in the space. We develop a latent surface model for cases when complete network data are unavailable. We focus specifically on aggregated relational data (ARD) which measure network structure indirectly by asking respondents how many connections they have with members of a certain subpopulation (e.g., How many individuals do you know who are HIV positive?) and are easily added to existing surveys. Instead of conditioning on the (latent) distance between twomembers of the network, the latent surface model for ARD conditions on the expected distance between a survey respondent and the center of a subpopulation on a latent manifold surface. A spherical latent surface and angular distance across the sphere's surface facilitate tractable computation of this expectation. This model estimates relative homogeneity between groups in the population and variation in the propensity for interaction between respondents and group members. The model also estimates features of groups which are difficult to reach using standard surveys (e.g., the homeless). Supplementary materials for this article are available online.
机译:尽管对建模和理解社交网络结构的各种科学应用的兴趣日益浓厚,但收集完整的网络数据在逻辑和财务上仍然具有挑战性,尤其是在社会科学领域。本文介绍了部分观察到的网络数据的社交网络结构的潜在表面表示。我们推导了观察到的演员和具有给定特征的未观察到的演员之间的预期(潜在)距离的多元度量。我们还在空间和生态统计中的工作与相关数据之间得出了新颖的相似之处。我们使用随机数字拨号电话调查和网络结构与传染病传播之间关系的多年前瞻性研究证明了我们模型的贡献。这里提出的模型与以前的网络模型有关,该模型通过投影到低维潜在几何表面编码相关性作为空间中的距离来表示高维结构。当没有完整的网络数据时,我们将开发一个潜在表面模型。我们特别关注汇总的关系数据(ARD),该数据通过询问受访者与某个特定人群的成员之间有多少联系(例如,您知道有多少个人是HIV阳性患者)而间接地测量网络结构,并且很容易添加到现有的现有数据中调查。代替以网络的两个成员之间的(潜在)距离为条件,用于ARD的潜在表面模型以调查受访者与潜在歧管表面上的子种群中心之间的预期距离为条件。球面的潜在表面和整个球体表面的角距离便于对该期望值进行易于计算。该模型估计了人口群体之间的相对同质性,以及受访者和群体成员之间互动倾向的变化。该模型还估计了使用标准调查(例如无家可归者)难以到达的群体的特征。可在线获得本文的补充材料。

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