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Detection of Suspicious or Un-Trusted Users in Crypto-Currency Financial Trading Applications

机译:检测加密货币金融交易应用中可疑或不受信任的用户

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摘要

In this age, where cryptocurrencies are slowly creeping into the banking services and making a name for them, it is becoming crucially essential to figure out the security concerns when users make transactions. This paper investigates the untrusted users of cryptocurrency transaction services, which are connected using smartphones and computers. However, as technology is increasing, transaction frauds are growing, and there is a need to detect vulnerabilities in systems. A methodology is proposed to identify suspicious users based on their reputation score by collaborating centrality measures and machine learning techniques. The results are validated on two cryptocurrencies network datasets, Bitcoin-OTC, and Bitcoin-Alpha, which contain information of the system formed by the users and the user's trust score. Results found that the proposed approach provides improved and accurate results. Hence, the fusion of machine learning with centrality measures provides a highly robust system and can be adapted to prevent smart devices' financial services.
机译:在这个年龄段,加密货币正在缓慢地进入银行服务并为他们提供名称,在用户进行交易时弄清楚安全问题是至关重要的。本文调查了使用智能手机和计算机连接的加密货币交易服务的不受信任的用户。然而,随着技术的增加,交易欺诈正在增长,并且需要检测系统中的漏洞。提出一种方法论以通过协作中心测量和机器学习技术来确定可疑用户的信誉评分。结果在两个加密电台网络数据集,比特币-OTC和比特币-α上验证,其中包含由用户和用户的信任分数形成的系统的信息。结果发现,该方法提供了改进和准确的结果。因此,通过中心测量的机器学习融合提供了一种非常强大的系统,可以适应防止智能设备的金融服务。

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