Federated Learning- Hope and Scope

IgMin Research Pub Date : 2023-11-16 DOI:10.61927/igmin112
Sherpa Lhamu, Banerji Nandan
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Abstract

People are suffering from” data obesity” as a result of the expansion and quick development of various Artificial Intelligence (AI) technologies and machine learning fields. The management of the current techniques is becoming more challenging due to the data created in the Smart-Health and Fintech service sectors. To provide stable and reliable methods for processing the data, several Machine Learning (ML) techniques were applied. Due to privacy-related issues with the aforementioned two providers, ML cannot fully use the data, which becomes difficult since it might not give the results that were expected. When the misuse and exploitation of personal data were gaining attention on a global scale and traditional machine learning (CML) was facing difficulties, Google introduced the concept of Federated Learning (FL). In order to enable the cooperative training of machine learning models among several organizations under privacy requirements, federated learning has been a popular research area. The expectation and potential of federated learning in terms of smart-health and fintech services are the main topics of this research.
联合学习--希望与范围
由于各种人工智能(AI)技术和机器学习领域的扩张和快速发展,人们正在遭受 "数据肥胖症 "的困扰。由于智能健康和金融科技服务行业所产生的数据,对现有技术的管理变得更具挑战性。为了提供稳定可靠的数据处理方法,一些机器学习(ML)技术得到了应用。由于上述两家提供商存在与隐私相关的问题,ML 无法完全使用数据,这就变得很困难,因为它可能无法提供预期的结果。当个人数据的滥用和利用在全球范围内受到关注,传统的机器学习(CML)面临困难时,谷歌提出了联合学习(FL)的概念。为了使机器学习模型能够在多个组织之间根据隐私要求进行合作训练,联合学习一直是一个热门研究领域。联合学习在智能健康和金融科技服务方面的预期和潜力是本研究的主要课题。
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