Strangely mined bitcoins: empirical analysis of anomalies in the bitcoin blockchain transaction network
Strangely mined bitcoins: empirical analysis of anomalies in the bitcoin blockchain transaction network
The blockchain technology introduced by bitcoin, with its decentralised peer-to-peer network and cryptographic protocols, provides a public and accessible database of bitcoin transactions that have attracted interest from both economics and network science as an example of a complex evolving monetary network. Despite the known cryptographic guarantees present in the blockchain, there exists significant evidence of inconsistencies and suspicious behavior in the chain. In this paper, we examine the prevalence and evolution of two types of anomalies occurring in coinbase transactions in blockchain mining, which we reported on in earlier research. We further develop our techniques for investigating the impact of these anomalies on the blockchain transaction network, by building networks induced by anomalous coinbase transactions at regular intervals and calculating a range of network measures, including degree correlation and assortativity, as well as inequality in terms of wealth and anomaly ratio using the Gini coefficient. We obtain time series of network measures calculated over the full transaction network and three sub-networks. Inspecting trends in these time series allows us to identify a period in time with particularly strange transaction behavior. We then perform a frequency analysis of this time period to reveal several blocks of highly anomalous transactions. Our technique represents a novel way of using network science to detect and investigate cryptographic anomalies.
Óskarsdóttir, María
d159ed8f-9dd3-4ff3-8b00-d43579ab71be
Mallett, Jacky
9e94903d-8d77-4af2-83b5-f1eda66883cc
September 2021
Óskarsdóttir, María
d159ed8f-9dd3-4ff3-8b00-d43579ab71be
Mallett, Jacky
9e94903d-8d77-4af2-83b5-f1eda66883cc
Óskarsdóttir, María and Mallett, Jacky
(2021)
Strangely mined bitcoins: empirical analysis of anomalies in the bitcoin blockchain transaction network.
PLoS ONE, 16 (9 September), [e0258001].
(doi:10.1371/journal.pone.0258001).
Abstract
The blockchain technology introduced by bitcoin, with its decentralised peer-to-peer network and cryptographic protocols, provides a public and accessible database of bitcoin transactions that have attracted interest from both economics and network science as an example of a complex evolving monetary network. Despite the known cryptographic guarantees present in the blockchain, there exists significant evidence of inconsistencies and suspicious behavior in the chain. In this paper, we examine the prevalence and evolution of two types of anomalies occurring in coinbase transactions in blockchain mining, which we reported on in earlier research. We further develop our techniques for investigating the impact of these anomalies on the blockchain transaction network, by building networks induced by anomalous coinbase transactions at regular intervals and calculating a range of network measures, including degree correlation and assortativity, as well as inequality in terms of wealth and anomaly ratio using the Gini coefficient. We obtain time series of network measures calculated over the full transaction network and three sub-networks. Inspecting trends in these time series allows us to identify a period in time with particularly strange transaction behavior. We then perform a frequency analysis of this time period to reveal several blocks of highly anomalous transactions. Our technique represents a novel way of using network science to detect and investigate cryptographic anomalies.
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Published date: September 2021
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© 2021 Óskarsdóttir, Mallett. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
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Local EPrints ID: 507833
URI: http://eprints.soton.ac.uk/id/eprint/507833
ISSN: 1932-6203
PURE UUID: 0b0856dc-d945-4a08-89fc-1ae6d9470c4f
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Date deposited: 06 Jan 2026 18:02
Last modified: 08 Jan 2026 03:27
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Author:
María Óskarsdóttir
Author:
Jacky Mallett
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