December 10, 2018
Conference Paper

Multi-Channel Large Network Simulation Including Adversarial Activity

Abstract

Using network simulation to generate high fidelity networks is essential to test adversarial search problems, in addition to their benefits of privacy preservation and benchmarking purposes. Different generative models have been developed to generate single-channel, homogeneous networks that can model domains such as social networks, communication, and co-authorship. Modeling adversarial activity compounds the complexity of network simulation as it requires generating multi-channel networks simultaneously with correlated channel attributes at scale. We present a methodology along with scalable graph modeling and generation tools to produce realistic large-scale synthetic background activity graphs with embedded an adversarial activity. We present a concrete use case based on an attack scenario developed with the help of subject matter experts (SMEs). We discuss challenges in modeling integration across channels, scalability of the generative models, and integration across such models. We also discuss required aspects to simulate high fidelity multi-channel networks up-to an order of billion edges.

Revised: February 12, 2020 | Published: December 10, 2018

Citation

Cottam J.A., S. Purohit, P.S. Mackey, and G. Chin. 2018. Multi-Channel Large Network Simulation Including Adversarial Activity. In IEEE International Conference on Big Data (Big Data 2018), December 10-13, 2018, Seattle, WA, 3947-3950. Piscataway, New Jersey:IEEE. PNNL-SA-138688. doi:10.1109/BigData.2018.8622305