VCG is a classical combinatorial auction that maximizes social welfare. However, while the standard single-item Vickrey auction is false-name-proof, a major failure of multi-item VCG is its vulnerability to false-name attacks. This occurs already in the natural bare minimum model in which there are two identical items and bidders are single-minded. Previous solutions to this challenge focused on developing alternative mechanisms that compromise social welfare. We re-visit the VCG auction vulnerability and consider the bidder behavior in Bayesian settings. In service of that we introduce a novel notion, termed the granularity threshold, that characterizes VCG Bayesian resilience to false-name attacks as a function of the bidder type distribution. Using this notion we show a large class of cases in which VCG indeed obtains Bayesian resilience for the two-item single-minded setting.
CITATION STYLE
Gafni, Y., Lavi, R., & Tennenholtz, M. (2020). VCG under sybil (False-Name) attacks - A Bayesian analysis. In AAAI 2020 - 34th AAAI Conference on Artificial Intelligence (pp. 1966–1973). AAAI press. https://doi.org/10.1609/aaai.v34i02.5567
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