Fairness and Efficiency in DAG-based Cryptocurrencies
October 04, 2019 Β· Declared Dead Β· π Financial Cryptography
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Authors
Georgios Birmpas, Elias Koutsoupias, Philip Lazos, Francisco J. Marmolejo-CossΓo
arXiv ID
1910.02059
Category
cs.CR: Cryptography & Security
Cross-listed
cs.GT,
cs.MA
Citations
15
Venue
Financial Cryptography
Last Checked
4 months ago
Abstract
Bitcoin is a decentralised digital currency that serves as an alternative to existing transaction systems based on an external central authority for security. Although Bitcoin has many desirable properties, one of its fundamental shortcomings is its inability to process transactions at high rates. To address this challenge, many subsequent protocols either modify the rules of block acceptance (longest chain rule) and reward, or alter the graphical structure of the public ledger from a tree to a directed acyclic graph (DAG). Motivated by these approaches, we introduce a new general framework that captures ledger growth for a large class of DAG-based implementations. With this in hand, and by assuming honest miner behaviour, we (experimentally) explore how different DAG-based protocols perform in terms of fairness, i.e., if the block reward of a miner is proportional to their hash power, as well as efficiency, i.e. what proportion of user transactions a ledger deems valid after a certain length of time. Our results demonstrate fundamental structural limits on how well DAG-based ledger protocols cope with a high transaction load. More specifically, we show that even in a scenario where every miner on the system is honest in terms of when they publish blocks, what they point to, and what transactions each block contains, fairness and efficiency of the ledger can break down at specific hash rates if miners have differing levels of connectivity to the P2P network sustaining the protocol.
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