Iamnitchi Adriana, Hall Lawrence O, Horawalavithana Sameera, Mubang Frederick, Ng Kin Wai, Skvoretz John
Department of Advanced Computing Sciences, Institute of Data Science, Maastricht University, Maastricht, Netherlands.
Department of Computer Science and Engineering, University of South Florida, Tampa, FL, United States.
Front Big Data. 2023 May 17;6:1135191. doi: 10.3389/fdata.2023.1135191. eCollection 2023.
Accurately modeling information diffusion within and across social media platforms has many practical applications, such as estimating the size of the audience exposed to a particular narrative or testing intervention techniques for addressing misinformation. However, it turns out that real data reveal phenomena that pose significant challenges to modeling: events in the physical world affect in varying ways conversations on different social media platforms; coordinated influence campaigns may swing discussions in unexpected directions; a platform's algorithms direct who sees which message, which affects in opaque ways how information spreads. This article describes our research efforts in the SocialSim program of the Defense Advanced Research Projects Agency. As formulated by DARPA, the intent of the SocialSim research program was "to develop innovative technologies for high-fidelity computational simulation of online social behavior ... [focused] specifically on information spread and evolution." In this article we document lessons we learned over the 4+ years of the recently concluded project. Our hope is that an accounting of our experience may prove useful to other researchers should they attempt a related project.
准确模拟社交媒体平台内部及跨平台的信息传播具有许多实际应用,比如估计接触特定叙事的受众规模,或测试应对错误信息的干预技术。然而,事实证明,真实数据揭示出的现象给建模带来了重大挑战:现实世界中的事件以不同方式影响着不同社交媒体平台上的对话;协同影响活动可能会使讨论转向意想不到的方向;平台算法决定谁能看到哪条信息,这以不透明的方式影响着信息的传播。本文描述了我们在国防高级研究计划局(DARPA)的SocialSim项目中的研究工作。按照DARPA的构想,SocialSim研究项目的目标是“开发用于在线社交行为高保真计算模拟的创新技术……特别关注信息传播与演变”。在本文中,我们记录了在最近结束的这个历时4年多的项目中所学到的经验教训。我们希望,若其他研究人员尝试相关项目,我们的经验记录可能会对他们有所帮助。