Litcius/Paper detail

A contemplative perspective on federated machine learning: Taxonomy, threats & vulnerability assessment and challenges

Divya Jatain, Vikram Sıngh, Naveen Dahiya

2021Journal of King Saud University - Computer and Information Sciences25 citationsDOIOpen Access PDF

Abstract

Today, the rapid growth of the internet and advancements in mobile technology and increased internet connectivity have brought us to a data-driven economy where an enormous amount of data is being used to train machine learning models to make strategic decisions. However, in the aftermath of a data breach by Facebook in 2018, there are some serious concerns over user data privacy and security being used to train the Machine Learning models. In this context, a new approach, Federated Machine Learning is now one of the most talked-about and recent approaches. Current research primarily focuses on Federated Learning's advantages over the traditional methods and/or its classification. However, being in a nascent stage of development as a method, certain challenges need to be addressed. This paper intends to address the totality of federated learning with a complete vulnerability assessment. During the study of the literature, it is found that security being promised as one of the key advantages of federated learning can still not be guaranteed because of some issues inherently present, and this can lead to poisoning, inference attacks and insertion of backdoors, etc. This paper intends to provide a complete picture by giving an in-depth and comprehensive analysis of Federated Learning and its taxonomy. It also provides a detailed vulnerability assessment and highlights the challenges faced in the current setting and future research directions to make federated learning a more functional, robust and secure method to train machine learning models.

Topics & Concepts

Computer scienceVulnerability (computing)Artificial intelligenceContext (archaeology)Computer securityTaxonomy (biology)Data scienceKnowledge managementMachine learningBotanyPaleontologyBiologyPrivacy-Preserving Technologies in DataAdversarial Robustness in Machine LearningPrivacy, Security, and Data Protection