Goldwasser et al.\ (2021) recently proposed the setting of PAC verification, where a hypothesis (machine learning model) that purportedly satisfies the agnostic PAC learning objective is verified using an interactive proof. In this paper we develop this notion further in a number of ways. First, we prove a lower bound for PAC verification of $\Omega(\sqrt{d})$ i.i.d.\ samples for hypothesis classes of VC dimension $d$. Second, we present a protocol for PAC verification of unions of intervals over $\mathbb{R}$ that improves upon their proposed protocol for that task, and matches our lower bound. Third, we introduce a natural generalization of their definition to verification of general statistical algorithms, which is applicable to a wider variety of practical algorithms beyond agnostic PAC learning. Showcasing our proposed definition, our final result is a protocol for the verification of statistical query algorithms that satisfy a combinatorial constraint on their queries.
翻译:Goldwasser等人(2021年)最近提议设置PAC核查,在这种核查中,使用互动证据核查据称符合不可知PAC学习目标的假设(机械学习模式),在这份文件中,我们以多种方式进一步发展了这一概念。首先,我们证明PAC核查美元Omega(sqrt{d})$(i.i.d.)样本对VC维度假设类别($d$)的样本限制较低。第二,我们提出了PAC对美元之间的间隔联盟进行核查的协议,该协议改进了为这项任务提出的协议,与我们较低的协议相符。第三,我们引入了对一般统计算法核查定义的自然概括化,该定义适用于超出Gnnocistic PAC学习的更广泛的实际算法。展示我们的拟议定义,我们的最后结果是核查统计查询算法的协议,该算出对其查询的组合限制。