Information Theoretic Optimal Surveillance for Epidemic Prevalence in Networks

Authors

  • Ritwick Mishra Biocomplexity Institute, University of Virginia Department of Computer Science, University of Virginia
  • Abhijin Adiga Biocomplexity Institute, University of Virginia
  • Madhav Marathe Biocomplexity Institute, University of Virginia Department of Computer Science, University of Virginia
  • S. S. Ravi Biocomplexity Institute, University of Virginia
  • Ravi Tandon Department of Electrical and Computer Engineering, University of Arizona
  • Anil Vullikanti Biocomplexity Institute, University of Virginia Department of Computer Science, University of Virginia

DOI:

https://doi.org/10.1609/aaai.v40i18.38583

Abstract

Estimating the true prevalence of an epidemic outbreak is a key public health problem. This is challenging because surveillance is usually resource intensive and biased. In the network setting, prior work on cost sensitive disease surveillance has focused on choosing a subset of individuals (or nodes) to minimize objectives such as probability of outbreak detection. Such methods do not give insights into the outbreak size distribution which, despite being complex and multi-modal, is very useful in public health planning. We introduce TESTPREV, a problem of choosing a subset of nodes which maximizes the mutual information with disease prevalence, which directly provides information about the outbreak size distribution. We show that, under the independent cascade (IC) model, solutions computed by all prior disease surveillance approaches are highly sub-optimal for TESTPREV in general. We also show that TESTPREV is hard to even approximate. While this mutual information objective is computationally challenging for general networks, we show that it can be computed efficiently for various network classes. We present a greedy strategy, called GREEDYMI, that uses estimates of mutual information from cascade simulations and thus can be applied on any network and disease model. We find that GREEDYMI does better than natural baselines in terms of maximizing the mutual information as well as reducing the expected variance in outbreak size, under the IC model.

Downloads

Published

2026-03-14

How to Cite

Mishra, R., Adiga, A., Marathe, M., Ravi, S. S., Tandon, R., & Vullikanti, A. (2026). Information Theoretic Optimal Surveillance for Epidemic Prevalence in Networks. Proceedings of the AAAI Conference on Artificial Intelligence, 40(18), 15546–15554. https://doi.org/10.1609/aaai.v40i18.38583

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management II