In cryptocurrency-based permissionless blockchain networks, the decentralized structure enables any user to join and operate across different regions. The criminal entities exploit it by using cryptocurrency transactions on the blockchain to facilitate activities such as money laundering, gambling, and ransomware attacks. In recent times, different machine learning-based techniques can detect such criminal elements based on blockchain transaction data. However, there is no provision within the blockchain to deal with such elements. We propose a reputation-based methodology for response to the users detected carrying out the aforementioned illicit activities. We select Algorand blockchain to implement our methodology by incorporating it within the consensus protocol. The theoretical results obtained prove the restriction and exclusion of criminal elements through block proposal rejection and attenuation of the voting power as a validator for such entities. Further, we analyze the efficacy of our method and show that it puts no additional strain on the communication resources.
翻译:在以加密货币为基础的无许可证的连锁网中,分散式结构使任何用户能够加入不同区域并运作。犯罪实体利用链条上的加密货币交易来利用它来便利洗钱、赌博和勒索软件袭击等活动。最近,不同的机器学习技术能够根据链条交易数据发现此类犯罪要素。然而,在链条中没有处理这些要素的规定。我们建议了一种以声誉为基础的方法,用以应对发现从事上述非法活动的用户。我们选择了阿尔戈兰链,通过将其纳入共识协议议定书来实施我们的方法。获得的理论结果证明,通过拒绝分块提案和削弱作为此类实体的验证人的投票权,限制和排除了犯罪要素。此外,我们分析我们的方法的有效性,并表明它不会给通信资源带来额外的压力。