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Deep Autoencoder Ensembles for Anomaly Detection on Blockchain

机译:深度自动化器组合在区块链中的异常检测

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Distributed Ledger technologies are becoming a standard for the management of online transactions, mainly due to their capability to ensure data privacy, trustworthiness and security. Still, they are not immune to security issues, as witnessed by recent successful cyber-attacks. Under a statistical perspective, attacks can be characterized as anomalous observations concerning the underlying activity. In this work, we propose an Ensemble Deep Learning approach to detect deviant behaviors on Blockchain where the base learner, an encoder-decoder model, is strengthened by iteratively learning and aggregating multiple instances, to compute an outlier score for each observation. Our experiments on historical logs of the Ethereum Classic network and synthetic data prove the capability of our model to effectively detect cyber-attacks.
机译:分布式分类帐技术正在成为在线交易管理的标准,主要是由于其能力确保数据隐私,可信度和安全性。尽管如此,它们仍然不会免受安全问题,最近成功的网络攻击。在统计的角度下,攻击可以表征为有关潜在活动的异常观察。在这项工作中,我们提出了一个集成的深度学习方法来检测基区基因链中的扩展行为,其中通过迭代地学习和聚合多个实例来加强基本学习者的基因Concoder模型,以计算每个观察的异常值。我们对国内经典网络和合成数据的历史记录的实验证明了我们的模型能够有效地检测网络攻击的能力。

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