MUBox: A Critical Evaluation Framework of Deep Machine Unlearning
Xiang Li, Bhavani Thuraisingham, Wenqi Wei

TL;DR
MUBox is a comprehensive evaluation platform for deep machine unlearning methods, enabling systematic comparison across scenarios and metrics, revealing inconsistencies and challenges in current approaches.
Contribution
This paper introduces MUBox, a unified framework integrating 23 unlearning techniques and 11 metrics for thorough evaluation in diverse deep learning scenarios.
Findings
State-of-the-art unlearning methods show inconsistent effectiveness.
No single metric fully captures unlearning performance.
Effectiveness of depoisoning methods varies with attack types.
Abstract
Recent legal frameworks have mandated the right to be forgotten, obligating the removal of specific data upon user requests. Machine Unlearning has emerged as a promising solution by selectively removing learned information from machine learning models. This paper presents MUBox, a comprehensive platform designed to evaluate unlearning methods in deep learning. MUBox integrates 23 advanced unlearning techniques, tested across six practical scenarios with 11 diverse evaluation metrics. It allows researchers and practitioners to (1) assess and compare the effectiveness of different machine unlearning methods across various scenarios; (2) examine the impact of current evaluation metrics on unlearning performance; and (3) conduct detailed comparative studies on machine unlearning in a unified framework. Leveraging MUBox, we systematically evaluate these unlearning methods in deep learning…
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