对比二元结果的多个社会网络自相关性,以及技术采用的应用

Bin Zhang, Andrew C. Thomas, P. Doreian, D. Krackhardt, R. Krishnan
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引用次数: 23

摘要

社会目标营销的兴起表明,消费者做出的决定不仅可以从他们的个人品味和特征中预测,还可以从他们网络中接近他们的人的决定中预测。需要考虑的一个障碍是,可能有几种不同的亲密度衡量标准是合适的,要么是通过不同类型的友谊,要么是一种友谊的不同距离功能,其中只有这些网络的一个子集可能是相关的。另一个原因是,这些决策通常是二元的,很难用传统的方法在概念上和计算上进行建模。为了解决这些问题,我们提出了一个针对单个二进制结果的分层自动概率模型,该模型使用并扩展了二进制数据自动概率方法的机制。我们证明了由多网络状态自动概率模型(m-NAP)估计的参数在各种灵敏度条件下的行为,例如先验分布的影响和网络结构的性质。我们还展示了信息系统感兴趣的网络中相关二进制数据结果的几个示例,包括来电者回铃音的采用,其使用由直接连接控制,但由其他网络拓扑解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contrasting Multiple Social Network Autocorrelations for Binary Outcomes, With Applications To Technology Adoption
The rise of socially targeted marketing suggests that decisions made by consumers can be predicted not only from their personal tastes and characteristics, but also from the decisions of people who are close to them in their networks. One obstacle to consider is that there may be several different measures for closeness that are appropriate, either through different types of friendships, or different functions of distance on one kind of friendship, where only a subset of these networks may actually be relevant. Another is that these decisions are often binary and more difficult to model with conventional approaches, both conceptually and computationally. To address these issues, we present a hierarchical auto-probit model for individual binary outcomes that uses and extends the machinery of the auto-probit method for binary data. We demonstrate the behavior of the parameters estimated by the multiple network-regime auto-probit model (m-NAP) under various sensitivity conditions, such as the impact of the prior distribution and the nature of the structure of the network. We also demonstrate several examples of correlated binary data outcomes in networks of interest to information systems, including the adoption of caller ring-back tones, whose use is governed by direct connection but explained by additional network topologies.
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