Selfish Behavior in the Tezos Proof-of-Stake Protocol
December 06, 2019 Β· Declared Dead Β· π Cryptoeconomic Systems
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Authors
Michael Neuder, Daniel J. Moroz, Rithvik Rao, David C. Parkes
arXiv ID
1912.02954
Category
cs.CR: Cryptography & Security
Cross-listed
cs.GT
Citations
30
Venue
Cryptoeconomic Systems
Last Checked
4 months ago
Abstract
Proof-of-Stake consensus protocols give rise to complex modeling challenges. We analyze the recently-updated Tezos Proof-of-Stake protocol and demonstrate that, under certain conditions, rational participants are incentivized to behave dishonestly. In doing so, we provide a theoretical analysis of the feasibility and profitability of a block stealing attack that we call selfish endorsing, a concrete instance of an attack previously only theoretically considered. We propose and analyze a simple change to the Tezos protocol which significantly reduces the (already small) profitability of this dishonest behavior, and introduce a new delay and reward scheme that is provably secure against length-1 and length-2 selfish endorsing attacks. Our framework provides a template for analyzing other Proof-of-Stake implementations for selfish behavior.
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