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Analyzing Transaction Confirmation in Ethereum Using Machine Learning Techniques

机译:使用机器学习技术分析了以外人的交易确认

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摘要

Ethereum has emerged as one of the most important cryp-tocurrencies in terms of the number of transactions. Given the recent growth of Ethereum, the cryptocurrency community and researchers are interested in understanding the Ethereum transactions behavior. In this work, we investigate a key aspect of Ethereum: the prediction of a transaction confirmation or failure based on its features. This is a challenging issue due to the small, but still relevant, fraction of failures in millions of recorded transactions and the complexity of the distributed mechanism to execute transactions in Ethereum. To conduct this investigation, we train machine learning models for this prediction, taking into consideration carefully balanced sets of confirmed and failed transactions. The results show high-performance models for classification of transactions with the best values of F_1-score and area under the ROC curve approximately equal to 0.67 and 0.87, respectively. Also, we identified the gas used as the most relevant feature for the prediction.
机译:Ethereum已成为交易数量最重要的CRYPORRENIE之一。鉴于最近的Etereum增长,加密货币社区和研究人员对理解国内交易行为有兴趣。在这项工作中,我们调查了以Etereum的一个关键方面:基于其功能预测交易确认或失败。这是一个具有挑战性的问题,因为数百万记录的交易中的小而且仍然相关,失败的一部分以及分布式机制在国内执行交易的复杂性。要进行这一调查,我们训练机器学习模型的这种预测,考虑到仔细平衡的确认和失败的交易。结果显示了高性能模型,用于分类交易分类,分别具有大约等于0.67和0.87的ROC曲线下的F_1分数和面积的最佳值。此外,我们鉴定了作为预测的最相关特征的气体。

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