Comprehensive Security and Privacy Framework against Malicious Insider in Cloud-based Machine Learning
Author(s):
Article Type:
Research/Original Article (دارای رتبه معتبر)
Abstract:
Cloud-based machine learning has become an increasingly popular approach for
training and deploying machine learning models, thanks to its scalability, cost-effectiveness, and ease
of access. However, the use of cloud-based machine learning also introduces new security and privacy
challenges, particularly with respect to insider threats. In this proposed research project, we aim to
develop a multi-faceted approach to enhancing security and privacy in cloud-based machine learning.
Our approach will draw on a range of techniques, including fully homomorphic encryption, multi-factor
authentication. The proposed framework conducts a comprehensive evaluation using a variety of
datasets and use cases, and this approach provides higher security and privacy as compared to existing
security and privacy frameworks for cloud-based machine learning. The ultimate goal is to provide
practical and effective solutions for enhancing security and privacy in cloud-based machine learning,
and to contribute to the ongoing efforts to address the challenges of insider threats in this rapidly evolving field.
training and deploying machine learning models, thanks to its scalability, cost-effectiveness, and ease
of access. However, the use of cloud-based machine learning also introduces new security and privacy
challenges, particularly with respect to insider threats. In this proposed research project, we aim to
develop a multi-faceted approach to enhancing security and privacy in cloud-based machine learning.
Our approach will draw on a range of techniques, including fully homomorphic encryption, multi-factor
authentication. The proposed framework conducts a comprehensive evaluation using a variety of
datasets and use cases, and this approach provides higher security and privacy as compared to existing
security and privacy frameworks for cloud-based machine learning. The ultimate goal is to provide
practical and effective solutions for enhancing security and privacy in cloud-based machine learning,
and to contribute to the ongoing efforts to address the challenges of insider threats in this rapidly evolving field.
Keywords:
Language:
English
Published:
Journal of Computing and Security, Volume:11 Issue: 1, Winte4 and Spring 2023
Pages:
49 to 66
https://www.magiran.com/p2778233