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AAAI 2020

Deception through Half-Truths

Conference Paper AAAI Technical Track: Reasoning under Uncertainty Artificial Intelligence

Abstract

Deception is a fundamental issue across a diverse array of settings, from cybersecurity, where decoys (e. g. , honeypots) are an important tool, to politics that can feature politically motivated “leaks” and fake news about candidates. Typical considerations of deception view it as providing false information. However, just as important but less frequently studied is a more tacit form where information is strategically hidden or leaked. We consider the problem of how much an adversary can affect a principal’s decision by “half-truths”, that is, by masking or hiding bits of information, when the principal is oblivious to the presence of the adversary. The principal’s problem can be modeled as one of predicting future states of variables in a dynamic Bayes network, and we show that, while theoretically the principal’s decisions can be made arbitrarily bad, the optimal attack is NP-hard to approximate, even under strong assumptions favoring the attacker. However, we also describe an important special case where the dependency of future states on past states is additive, in which we can efficiently compute an approximately optimal attack. Moreover, in networks with a linear transition function we can solve the problem optimally in polynomial time.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
1118032252409916604