As intelligent agents become autonomous over longer periods of time, they may eventually become lifelong counterparts to specific people. If so, it may be common for a user to want the agent to master a task temporarily but later on to forget the task due to privacy concerns. However enabling an agent to \emph{forget privately} what the user specified without degrading the rest of the learned knowledge is a challenging problem. With the aim of addressing this challenge, this paper formalizes this continual learning and private unlearning (CLPU) problem. The paper further introduces a straightforward but exactly private solution, CLPU-DER++, as the first step towards solving the CLPU problem, along with a set of carefully designed benchmark problems to evaluate the effectiveness of the proposed solution. The code is available at https://github.com/Cranial-XIX/Continual-Learning-Private-Unlearning.
翻译:随着智能剂在较长的时间内变得自主,它们最终可能成为特定人群的终身对应物。如果是这样,用户通常会希望该剂暂时完成一项任务,但后来又会因为隐私问题而忘记这一任务。然而,使该剂能够在不贬低所学到的知识的其余部分的情况下做到用户所指定的那些事是一个具有挑战性的问题。为了应对这一挑战,本文件将这种不断学习和私人不学习的问题正式化。该文件进一步提出了直接但完全私人的解决办法,即CLPU-DER++,作为解决计算机辅助装置问题的第一步,同时提出一套精心设计的基准问题,以评估拟议解决办法的有效性。该代码可在https://github.com/Cranal-XIX/Continual-Lainste-Prial-Uness查阅。该代码可在https://github.com/Corinaal-XIX/Continual-Lain-Inter-Uness查阅。