A Survey of Machine Unlearning
Thanh Tam Nguyen, Thanh Trung Huynh, Zhao Ren, Phi Le Nguyen, Alan, Wee-Chung Liew, Hongzhi Yin, Quoc Viet Hung Nguyen

TL;DR
This survey comprehensively reviews machine unlearning, a crucial approach for enabling ML models to forget specific data, addressing privacy concerns and regulatory requirements, and highlighting current methods, challenges, and future research directions.
Contribution
It provides a detailed overview of machine unlearning concepts, methods, and applications, serving as a valuable resource for researchers and practitioners in privacy-preserving machine learning.
Findings
Identifies key challenges in implementing machine unlearning.
Summarizes recent methods and frameworks for data removal in ML models.
Highlights future research directions and potential applications.
Abstract
Today, computer systems hold large amounts of personal data. Yet while such an abundance of data allows breakthroughs in artificial intelligence, and especially machine learning (ML), its existence can be a threat to user privacy, and it can weaken the bonds of trust between humans and AI. Recent regulations now require that, on request, private information about a user must be removed from both computer systems and from ML models, i.e. ``the right to be forgotten''). While removing data from back-end databases should be straightforward, it is not sufficient in the AI context as ML models often `remember' the old data. Contemporary adversarial attacks on trained models have proven that we can learn whether an instance or an attribute belonged to the training data. This phenomenon calls for a new paradigm, namely machine unlearning, to make ML models forget about particular data. It…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Adversarial Robustness in Machine Learning · Age of Information Optimization
