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An Introduction to Machine Unlearning

Computing Research Repository (CoRR)(2022)

Cited 7|Views11
Abstract
Removing the influence of a specified subset of training data from a machine learning model may be required to address issues such as privacy, fairness, and data quality. Retraining the model from scratch on the remaining data after removal of the subset is an effective but often infeasible option, due to its computational expense. The past few years have therefore seen several novel approaches towards efficient removal, forming the field of "machine unlearning", however, many aspects of the literature published thus far are disparate and lack consensus. In this paper, we summarise and compare seven state-of-the-art machine unlearning algorithms, consolidate definitions of core concepts used in the field, reconcile different approaches for evaluating algorithms, and discuss issues related to applying machine unlearning in practice.
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machine unlearning,introduction
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要点】:本文介绍了机器遗忘的概念,并对比分析了七种先进的机器遗忘算法,以解决隐私、公平性和数据质量等问题,同时统一了领域内核心概念的定义及算法评估方法。

方法】:作者总结了当前机器遗忘领域的核心概念,对比了七种机器遗忘算法,并统一了算法评估的不同方法。

实验】:本文没有具体描述实验过程,未提及使用的数据集名称,但概述了算法比较的内容和实际应用中遇到的问题。