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Discovering and Clustering Hidden Time Patterns in Blockchain Ledger

机译:在BlockChain分类帐中发现和聚类隐藏时间模式

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摘要

Currently, immutable blockchain-based ledgers become important tools for cryptocurrency transactions, auditing, smart contracts, copyright registration and many other applications. In this regard, there is a need to analyze the typical, repetitive actions written to the ledger, for example, to identify suspicious cryptocurrency transactions, a chain of events that led to information security incident, or to predict recurrence of some situation in the future. We propose to use for these purposes the algorithms for T-patterns discovering and to cluster the identified behavioral patterns subsequently. In case of having labeled patterns, clustering might be replaced by classification.
机译:目前,基于块基因链的LEDGERS成为加密货币交易,审计,智能合同,版权登记和许多其他应用的重要工具。 在这方面,需要分析写入分类帐的典型,重复动作,例如,以识别可疑加密货币,这是一系列导致信息安全事件的事件,或者预测未来某些情况的复发 。 我们建议用于这些目的,用于在随后发现和聚类所识别的行为模式的T形图案的算法。 如果具有标记的模式,则可以通过分类替换聚类。

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