One of the most fundamental problems in the field of hypothesis testing is the identity testing problem: whether samples from some unknown distribution $\mathcal{G}$ are actually from some explicit distribution $\mathcal{D}$. It is known that when the distribution $\mathcal{D}$ has support $[N]$, the optimal sample complexity for the identity testing problem is roughly $O(\sqrt{N})$. However, many distributions of interest, including those which can be sampled efficiently, have exponential support size, and therefore the optimal identity tester also requires exponential samples. In this paper, we bypass this lower bound by considering restricted settings. The above $O(\sqrt{N})$ sample complexity identity tester is constructed so that it is not fooled by any (even inefficiently-sampled) distributions. However, in most applications, the distributions under consideration are efficiently samplable, and therefore it is enough to consider only identity testers that are not fooled by efficiently-sampled distributions. In this setting we can hope to construct efficient identity testers. We investigate relations between efficient verification of classical/quantum distributions with classical/quantum cryptography, showing the following results: (1). Classically efficiently samplable distributions are verifiable if and only if one-way functions do not exist. (2). Quantumly efficiently samplable distributions are verifiable by $\mathbf{P}^\mathbf{PP}$ with a polynomial number of samples. (3). Sampling-based quantum advantage can be verified quantumly (with a polynomial number of samples) if one-way puzzles do not exist. (4). If QEFID pairs exist, then some quantumly efficiently samplable distributions are not verifiable.
翻译:假设检验领域中最基本的问题之一是身份验证问题:即判断来自某个未知分布 $\mathcal{G}$ 的样本是否实际上来自某个显式分布 $\mathcal{D}$。已知当分布 $\mathcal{D}$ 的支撑集为 $[N]$ 时,身份验证问题的最优样本复杂度约为 $O(\sqrt{N})$。然而,许多重要分布(包括可高效采样的分布)具有指数级支撑集规模,因此最优身份验证器也需要指数级样本。本文通过考虑受限设定绕过该下界。上述 $O(\sqrt{N})$ 样本复杂度的身份验证器被构造为不受任何(即使低效采样的)分布欺骗。但在大多数应用中,所考虑的分布是可高效采样的,因此仅需考虑不受可高效采样分布欺骗的身份验证器。在此设定下,我们有望构建高效身份验证器。我们研究了经典/量子分布的高效验证与经典/量子密码学之间的关系,得到以下结果:(1)经典可高效采样分布可验证当且仅当单向函数不存在。(2)量子可高效采样分布可通过 $\mathbf{P}^\mathbf{PP}$ 以多项式数量样本进行验证。(3)若单向谜题不存在,基于采样的量子优势可通过量子方式(以多项式数量样本)验证。(4)若 QEFID 对存在,则某些量子可高效采样分布不可验证。