2021
DOI: 10.1002/spy2.192
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Anomaly detection in blockchain using network representation and machine learning

Abstract: The vast majority of digital currency transactions rely on a blockchain framework to ensure quick and accurate execution. As such, understanding how a blockchain works is vital to understanding the dynamics of cryptocurrency operations. One of the key benefits of this type of system is the exhaustive records captured in a given marketplace. The interwoven movement between agents can effectively be expressed as a graph via the extraction of historical data from the blockchain. By looking at a specific blockchai… Show more

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Cited by 21 publications
(13 citation statements)
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References 15 publications
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“… Martin et al. 176 GNN, GAT Transaction data on Ethereum blockchain from August 2, 2016 to January 15, 2017 Graph neural network algorithm has higher anomaly detection accuracy. An anomaly detection framework for Ethereum blockchain based on OCGNN is proposed.…”
Section: Overview Of Cryptocurrencymentioning
confidence: 99%
See 1 more Smart Citation
“… Martin et al. 176 GNN, GAT Transaction data on Ethereum blockchain from August 2, 2016 to January 15, 2017 Graph neural network algorithm has higher anomaly detection accuracy. An anomaly detection framework for Ethereum blockchain based on OCGNN is proposed.…”
Section: Overview Of Cryptocurrencymentioning
confidence: 99%
“…Regarding abnormal trading detections, researchers first employed K-means clustering and SVM models. 174 , 175 , 176 For example, Monamo et al. 174 used the Trimmed K-means algorithm to detect unsupervised cybercrimes, successfully detecting some known fraudulent activities and improving the detection rate for known fraudulent elements.…”
Section: Deep Learning In Cryptocurrencymentioning
confidence: 99%
“…Additionally, the extent of Bitcoin's anonymity is investigated by clustering, identifying, and categorizing Bitcoin addresses, which sheds light on the possibility of revealing the identity of users or organizations in the Bitcoin ecosystem. Reference [66] suggests utilizing multiple ML models for the identification of anomalous transactions in different digital currency markets. On the other hand, [67] aimed to develop a deep learning model based on a multiplicative long short-term memory (LSTM) architecture and an attention mechanism that incorporates technical indicators to enhance the accuracy and reduce the error rate of bitcoin price prediction.…”
Section: ) Blockchain Technical Aspectsmentioning
confidence: 99%
“…Martin et al, [17] proposed a conceptual analysis of various digital currency markets to detect anomalous Bitcoin entities. Their experimental data focused on the user activity or interaction when purchasing and selling digital coins on a free and open market platform.…”
Section: Related Workmentioning
confidence: 99%