LGAIDCJun 2, 2023

On Knowledge Editing in Federated Learning: Perspectives, Challenges, and Future Directions

arXiv:2306.01431v15 citationsh-index: 69
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that synthesizes recent advancements in knowledge editing for Federated Learning, targeting researchers and practitioners in distributed machine learning.

The paper addresses the problem of catastrophic forgetting and selective knowledge removal in Federated Learning by surveying existing methods and proposing an integrated paradigm called Federated Editable Learning (FEL) to summarize state-of-the-art research and expand perspectives across domains.

As Federated Learning (FL) has gained increasing attention, it has become widely acknowledged that straightforwardly applying stochastic gradient descent (SGD) on the overall framework when learning over a sequence of tasks results in the phenomenon known as ``catastrophic forgetting''. Consequently, much FL research has centered on devising federated increasing learning methods to alleviate forgetting while augmenting knowledge. On the other hand, forgetting is not always detrimental. The selective amnesia, also known as federated unlearning, which entails the elimination of specific knowledge, can address privacy concerns and create additional ``space'' for acquiring new knowledge. However, there is a scarcity of extensive surveys that encompass recent advancements and provide a thorough examination of this issue. In this manuscript, we present an extensive survey on the topic of knowledge editing (augmentation/removal) in Federated Learning, with the goal of summarizing the state-of-the-art research and expanding the perspective for various domains. Initially, we introduce an integrated paradigm, referred to as Federated Editable Learning (FEL), by reevaluating the entire lifecycle of FL. Secondly, we provide a comprehensive overview of existing methods, evaluate their position within the proposed paradigm, and emphasize the current challenges they face. Lastly, we explore potential avenues for future research and identify unresolved issues.

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