Split-Scale: Scaling Bitcoin by Partitioning the UTXO Space
September 22, 2018 Β· Declared Dead Β· π 2018 IEEE 9th International Conference on Software Engineering and Service Science (ICSESS)
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Authors
KazΔ±m RΔ±fat ΓzyΔ±lmaz, Harsh Patel, Ankit Malik
arXiv ID
1809.08473
Category
cs.CR: Cryptography & Security
Citations
12
Venue
2018 IEEE 9th International Conference on Software Engineering and Service Science (ICSESS)
Last Checked
3 months ago
Abstract
The Bitcoin protocol is a significant milestone in the history of money. However, its adoption is currently constrained by the transaction limits of the system. As the chief problem of blockchain technology, the scaling issue has attracted many valuable solutions both on-chain and off-chain. In this paper, our goal is to explore the notion of unspent transaction outputs (UTXOs) to propose an augmented Bitcoin protocol that can scale gracefully. Our proposal aims to increase the transaction throughput by partitioning the UTXO space and splitting the blockchain. In addition, a new type of Bitcoin node is introduced to preserve the capability to run validating nodes in low-bandwidth environments, despite the increased transaction throughput.
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