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A Machine Learning-Based Method for Automated Blockchain Transaction Signing Including Personalized Anomaly Detection

机译:包含个性化异常检测的基于机器学习的自动区块链交易签名方法

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摘要

The basis of blockchain-related data, stored in distributed ledgers, are digitally signed transactions. Data can be stored on the blockchain ledger only after a digital signing process is performed by a user with a blockchain-based digital identity. However, this process is time-consuming and not user-friendly, which is one of the reasons blockchain technology is not fully accepted. In this paper, we propose a machine learning-based method, which introduces automated signing of blockchain transactions, while including also a personalized identification of anomalous transactions. In order to evaluate the proposed method, an experiment and analysis were performed on data from the Ethereum public main network. The analysis shows promising results and paves the road for a possible future integration of such a method in dedicated digital signing software for blockchain transactions.
机译:存储在分布式分类帐中的区块链相关数据的基础是数字签名的交易。只有在具有基于区块链的数字身份的用户执行数字签名过程之后,才能将数据存储在区块链分类帐中。但是,此过程很耗时且不友好,这是区块链技术未被完全接受的原因之一。在本文中,我们提出了一种基于机器学习的方法,该方法介绍了区块链交易的自动签名,同时还包括异常交易的个性化识别。为了评估所提出的方法,对以太坊公共主网络的数据进行了实验和分析。分析显示出令人鼓舞的结果,并为将来将这种方法集成到用于区块链交易的专用数字签名软件中铺平了道路。

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