Implementation of Deep Neural Network in the Design of Ethereum Blockchain Scam Token Detection Applications

Dimas Arya Pamungkas, Ivana Lucia Kharisma, Dwi Sartika Simatupang, Kamdan Kamdan
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Abstract

The popularity of blockchain continues to increase as technology develops, especially in the context of Ethereum as one of the leading blockchain platforms. However, this increase was also followed by many cases of fraud, especially in the form of tokens. In blockchain technology, tokens often refer to cryptocurrencies or digital currencies used as a means of exchange related to a particular project or platform. This research designs and builds an application system that can detect scam crypto tokens on the Ethereum blockchain, specifically for the ERC-20 (Ethereum Request for Comments 20) token type, which was proposed by Fabian Vogelsteller in November 2015, is a token standard that implements APIs for tokens. in Smart Contracts. Making a scam detection application implements the deep learning method with the Deep Neural Network (DNN) algorithm and evaluates performance using two test scenarios by dividing the dataset into three ratios of training data and test data. The output of the application is JSON-RPC which is integrated with the website. In testing the DNN model, using 80% training data and 20% test data, the DNN algorithm provides an accuracy of 0.997558%. Furthermore, system testing was carried out involving various scenarios to verify its functionality, including input validation, data extraction, DNN prediction, and display of prediction results, which gave good results from the system created. The application has succeeded in identifying scam tokens with high accuracy. , increasing user security in crypto transactions.
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深度神经网络在以太坊区块链诈骗令牌检测应用设计中的实现
随着技术的发展,区块链的普及程度不断增加,特别是在以太坊作为领先的区块链平台之一的背景下。然而,这一增长之后也出现了许多欺诈案件,特别是以代币的形式。在区块链技术中,代币通常是指作为与特定项目或平台相关的交换手段的加密货币或数字货币。本研究设计并构建了一个可以在以太坊区块链上检测诈骗加密令牌的应用系统,特别是针对由Fabian Vogelsteller于2015年11月提出的ERC-20 (Ethereum Request for Comments 20)令牌类型,这是一个实现令牌api的令牌标准。在智能合约。制作诈骗检测应用程序,使用深度神经网络(deep Neural Network, DNN)算法实现深度学习方法,并通过将数据集分为训练数据和测试数据的三个比例,使用两个测试场景评估性能。应用程序的输出是与网站集成的JSON-RPC。在对DNN模型的测试中,使用80%的训练数据和20%的测试数据,DNN算法的准确率为0.997558%。此外,我们还对系统进行了各种场景的测试,包括输入验证、数据提取、DNN预测、预测结果显示等,验证了系统的功能,所创建的系统取得了良好的效果。该应用程序已成功地识别诈骗令牌具有很高的准确性。提高用户在加密交易中的安全性。
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12
审稿时长
12 weeks
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