English

Learning and Planning in the Feature Deception Problem

Artificial Intelligence 2020-06-11 v2 Cryptography and Security Computer Science and Game Theory Machine Learning

Abstract

Today's high-stakes adversarial interactions feature attackers who constantly breach the ever-improving security measures. Deception mitigates the defender's loss by misleading the attacker to make suboptimal decisions. In order to formally reason about deception, we introduce the feature deception problem (FDP), a domain-independent model and present a learning and planning framework for finding the optimal deception strategy, taking into account the adversary's preferences which are initially unknown to the defender. We make the following contributions. (1) We show that we can uniformly learn the adversary's preferences using data from a modest number of deception strategies. (2) We propose an approximation algorithm for finding the optimal deception strategy given the learned preferences and show that the problem is NP-hard. (3) We perform extensive experiments to validate our methods and results. In addition, we provide a case study of the credit bureau network to illustrate how FDP implements deception on a real-world problem.

Keywords

Cite

@article{arxiv.1905.04833,
  title  = {Learning and Planning in the Feature Deception Problem},
  author = {Zheyuan Ryan Shi and Ariel D. Procaccia and Kevin S. Chan and Sridhar Venkatesan and Noam Ben-Asher and Nandi O. Leslie and Charles Kamhoua and Fei Fang},
  journal= {arXiv preprint arXiv:1905.04833},
  year   = {2020}
}
R2 v1 2026-06-23T09:04:17.865Z