Enhancing Collaborative Machine Learning for Security and Privacy in Federated Learning

Authors

  • Mingwei Zhu Computer Information System, Colorado state university, Fort Collins, CO, USA
  • Jiaqiang Yuan Information Studies,Trine University,Phoenix, AZ,USA
  • Guanghui Wang Computer Science,Individual Contributor,Shanghai,CN
  • Zheng Xu Computer Engineering,Stevens Institute of Technology,Hoboken, NJ,USA
  • Kuo Wei Computer Science,Individual Contributor,Shenzhen, China

DOI:

https://doi.org/10.53469/jtpes.2024.04(02).11

Keywords:

Machine learning, Security and privacy, Federal learning

Abstract

In the age of the Internet, machine learning has revolutionized our lives, offering convenience and innovation. However, it also poses significant security and privacy risks that cannot be overlooked. With the vast amount of personal data we upload online, including search histories and location data, there's a growing concern about how this information is collected and potentially exploited by hackers or malicious actors.Moreover, in the realm of machine learning, there's a risk of attackers stealing training data and model results, which can disrupt algorithms and lead to substantial economic losses or even threats to human safety. Thus, safeguarding the security and privacy of machine learning processes has become paramount.This paper delves into the myriad security challenges and privacy risks associated with machine learning algorithms. It explores methods and technologies for securing federated learning, offering technical solutions to protect privacy while maintaining the efficiency and effectiveness of machine learning systems.

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Published

2024-03-01

How to Cite

Zhu, M., Yuan, J., Wang, G., Xu, Z., & Wei, K. (2024). Enhancing Collaborative Machine Learning for Security and Privacy in Federated Learning . Journal of Theory and Practice of Engineering Science, 4(02), 74–82. https://doi.org/10.53469/jtpes.2024.04(02).11