Collaborative Algorithm for User Trust and Data Security Based on Blockchain and Machine Learning

Dishu Yang , Xingyu Liu
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引用次数: 0

Abstract

Machine learning has achieved remarkable results in numerous fields, demonstrating strong momentum and promising prospects for future development. However, machine learning is facing issues related to data security. User data contains a vast amount of sensitive personal information, and once privacy is breached, users may not only suffer from harassment but also face threats to their lives and property security. As a result, users’ willingness and trust in sharing local raw data are gradually decreasing. In response to this situation, federated learning technology has emerged, which enables efficient training of decentralized data through distributed machine learning methods while protecting users’ data privacy. Traditional federated learning systems suffer from issues such as single points of failure and lack of trust. Blockchain, as a decentralized, traceable, and tamper-resistant distributed ledger technology, provides a new solution for federated learning. It records every update of the global model, verifies and tracks local updates, and is equipped with a fair incentive mechanism. Based on these ideas, this paper proposes a federated learning framework combined with blockchain, aiming to address data security issues in federated learning.
基于区块链和机器学习的用户信任与数据安全协同算法
机器学习在众多领域取得了显著成果,显示出强劲的发展势头和良好的发展前景。然而,机器学习面临着与数据安全相关的问题。用户数据中包含大量敏感的个人信息,一旦隐私被泄露,用户不仅会遭受骚扰,还会面临生命财产安全的威胁。因此,用户对本地原始数据共享的意愿和信任度逐渐下降。针对这种情况,联邦学习技术应运而生,在保护用户数据隐私的同时,通过分布式机器学习方法对分散的数据进行高效训练。传统的联邦学习系统存在单点故障和缺乏信任等问题。区块链作为一种去中心化、可追踪、防篡改的分布式账本技术,为联邦学习提供了一种新的解决方案。它记录全局模型的每一次更新,验证和跟踪局部更新,并配备公平的激励机制。基于这些思想,本文提出了一个结合区块链的联邦学习框架,旨在解决联邦学习中的数据安全问题。
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