ADPP: A Novel Anomaly Detection and Privacy-Preserving Framework using Blockchain and Neural Networks in Tokenomics

Wei Yao, Jingyi Gu, Wenlu Du, Fadi P. Deek, Guiling Wang
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引用次数: 1

Abstract

The increasing popularity of crypto assets has resulted in greater cryptocurrency investor interest and more exposure in both industry and academia. Despite the substantial socioeconomic benefits, the anonymous character of cryptocurrency trading makes it prone to abuse and a magnet for illicit purposes, which cause monetary losses for individual traders and erosion in the standing of the tokenomics industry. To regulate the illicit behavior and secure users' privacy for cryptocurrency trading, we present an Anomaly Detection and Privacy-Preserving (ADPP) Framework integrating blockchain and deep learning technologies. Specifically, ADPP leverages blockchain technologies to build a user management platform that ensures anonymity and enhances the privacy-preservation of user information. Atop the user management system, an Anomaly Detection System adapts neural networks and imbalanced learning on topological cryptocurrency flow among users to identify anomalous addresses and maintain a sanction list repository. The experiments on the real-world dataset demonstrate the effectiveness and superior performance of ADPP. The flexible framework can be easily generalized to the crypto assets with public real-time transaction (e.g., Non-fungible Token), which takes up a significant proportion of market capitalization in the domain of tokenomics.
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ADPP:一种新的异常检测和隐私保护框架,在标记经济学中使用区块链和神经网络
加密资产的日益普及导致加密货币投资者的兴趣越来越大,并且在工业界和学术界都有更多的曝光率。尽管具有巨大的社会经济效益,但加密货币交易的匿名性使其容易被滥用,并成为非法目的的磁铁,这给个人交易者造成了金钱损失,并侵蚀了代币经济学行业的地位。为了规范加密货币交易的非法行为并保护用户的隐私,我们提出了一个集成区块链和深度学习技术的异常检测和隐私保护(ADPP)框架。具体而言,ADPP利用区块链技术构建用户管理平台,确保匿名性,增强用户信息的隐私保护。在用户管理系统之上,异常检测系统采用神经网络和用户之间拓扑加密货币流的不平衡学习来识别异常地址并维护制裁列表存储库。在实际数据集上的实验证明了ADPP算法的有效性和优越的性能。灵活的框架可以很容易地推广到具有公共实时交易的加密资产(例如,不可替代的代币),这在代币经济学领域占据了很大比例的市值。
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