POVM 假设类的破碎、联合可测性和 PAC 可学性

IF 2.2 3区 物理与天体物理 Q1 PHYSICS, MATHEMATICAL
Abram Magner, Arun Padakandla
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引用次数: 0

摘要

在学习者只能访问准备好的量子态的情况下,我们通过建立量子测量类可能近似正确(PAC)可学性的匹配必要条件和充分条件,以及相应的样本复杂度边界,来表征量子测量类的可学性。我们首先证明,之前工作中提出的经验风险最小化(ERM)规则并不通用,经验风险的均匀收敛也不代表可学性。此外,我们还证明,即使是对于定义在有限维希尔伯特空间上的测量类,即使是对于可学习类,前人工作中的 VC 维度泛化边界在很多情况下也是无限的。为了克服标准 ERM 不能满足均匀收敛的问题,我们定义了一种新的学习规则--去噪经验风险最小化。我们证明了这是一种适用于经典概率观测概念类和量子测量类的通用学习规则,而它满足均匀收敛的条件是类的有限破碎维度。假设类的胖破碎维度是一种复杂度度量,它介入了经典学习理论中回归的样本复杂度界限。我们用有限碎脂维度和近似有限可分割性给出了可学习性的样本复杂度上界和下界,并将其划分为近似可联合度量的子集。我们将脂肪破碎维度与近似联合可测量子集的可分割性联系起来,从而得出我们的匹配条件。我们还证明,定义在有限维希尔伯特空间上的每个测量类都是 PAC 可学习的。我们用几个 POVM 类的例子来说明我们的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fat shattering, joint measurability, and PAC learnability of POVM hypothesis classes

We characterize learnability for quantum measurement classes by establishing matching necessary and sufficient conditions for their probably approximately correct (PAC) learnability, along with corresponding sample complexity bounds, in the setting where the learner is given access only to prepared quantum states. We first show that the empirical risk minimization (ERM) rule proposed in previous work is not universal, nor does uniform convergence of the empirical risk characterize learnability. Moreover, we show that VC dimension generalization bounds in previous work are in many cases infinite, even for measurement classes defined on a finite-dimensional Hilbert space and even for learnable classes. To surmount the failure of the standard ERM to satisfy uniform convergence, we define a new learning rule—denoised empirical risk minimization. We show this to be a universal learning rule for both classical probabilistically observed concept classes and quantum measurement classes, and the condition for it to satisfy uniform convergence is finite fat shattering dimension of the class. The fat shattering dimension of a hypothesis class is a measure of complexity that intervenes in sample complexity bounds for regression in classical learning theory. We give sample complexity upper and lower bounds for learnability in terms of finite fat shattering dimension and approximate finite partitionability into approximately jointly measurable subsets. We link fat shattering dimension with partitionability into approximately jointly measurable subsets, leading to our matching conditions. We also show that every measurement class defined on a finite-dimensional Hilbert space is PAC learnable. We illustrate our results on several example POVM classes.

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来源期刊
Quantum Information Processing
Quantum Information Processing 物理-物理:数学物理
CiteScore
4.10
自引率
20.00%
发文量
337
审稿时长
4.5 months
期刊介绍: Quantum Information Processing is a high-impact, international journal publishing cutting-edge experimental and theoretical research in all areas of Quantum Information Science. Topics of interest include quantum cryptography and communications, entanglement and discord, quantum algorithms, quantum error correction and fault tolerance, quantum computer science, quantum imaging and sensing, and experimental platforms for quantum information. Quantum Information Processing supports and inspires research by providing a comprehensive peer review process, and broadcasting high quality results in a range of formats. These include original papers, letters, broadly focused perspectives, comprehensive review articles, book reviews, and special topical issues. The journal is particularly interested in papers detailing and demonstrating quantum information protocols for cryptography, communications, computation, and sensing.
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