Bitcoin Blockchain Dynamics: the Selfish-Mine Strategy in the Presence of Propagation Delay
May 20, 2015 Β· Declared Dead Β· π Performance evaluation (Print)
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Authors
Johannes GΓΆbel, Paul Keeler, Anthony E. Krzesinski, Peter G. Taylor
arXiv ID
1505.05343
Category
cs.CR: Cryptography & Security
Citations
241
Venue
Performance evaluation (Print)
Last Checked
3 months ago
Abstract
In the context of the `selfish-mine' strategy proposed by Eyal and Sirer, we study the effect of propagation delay on the evolution of the Bitcoin blockchain. First, we use a simplified Markov model that tracks the contrasting states of belief about the blockchain of a small pool of miners and the `rest of the community' to establish that the use of block-hiding strategies, such as selfish-mine, causes the rate of production of orphan blocks to increase. Then we use a spatial Poisson process model to study values of Eyal and Sirer's parameter $Ξ³$, which denotes the proportion of the honest community that mine on a previously-secret block released by the pool in response to the mining of a block by the honest community. Finally, we use discrete-event simulation to study the behaviour of a network of Bitcoin miners, a proportion of which is colluding in using the selfish-mine strategy, under the assumption that there is a propagation delay in the communication of information between miners.
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