论文标题
生成模型中实用量子优势的概括指标
Generalization Metrics for Practical Quantum Advantage in Generative Models
论文作者
论文摘要
随着量子计算社区倾向于了解量子计算机的实际好处,在特定应用程序的背景下,具有清晰的定义和评估方案来评估实际量子优势。例如,生成建模是一种广泛接受的量子计算机的自然用例,但缺乏一种具体的方法来量化量子模型而不是经典模型。在这项工作中,我们通过测量算法的概括性能来构建一种简单明了的方法来探测生成量子的实用量子优势。使用此处提出的基于样本的方法,可以在混凝土定义良好的框架上以相同的地面评估任何生成模型,例如甘纳斯(GAN)的最先进的经典生成模型,例如gans到量子模型,例如量子电路出生的机器。与其他基于样本的指标进行探测实践概括相反,我们利用了约束优化问题(例如,基数受限的问题),并使用这些离散数据集来定义能够明确衡量模型质量以及模型的概括能力的特定指标,以超越训练集,但仍在有效的解决方案中。此外,我们的指标可以诊断诸如模式崩溃和过度拟合之类的训练性问题,正如我们将gan与张量网络构建的量子启发的模型进行比较时所说明的。我们的仿真结果表明,与gan相比,我们的量子启发的模型在生成看不见的独特和有效样品方面具有高达$ 68 \ times $的增强功能,而与训练集中观察到的样品相比,生成质量更好的样品的比率为61:2。我们预计这些指标是在生成建模领域中严格定义实用量子优势的宝贵工具。
As the quantum computing community gravitates towards understanding the practical benefits of quantum computers, having a clear definition and evaluation scheme for assessing practical quantum advantage in the context of specific applications is paramount. Generative modeling, for example, is a widely accepted natural use case for quantum computers, and yet has lacked a concrete approach for quantifying success of quantum models over classical ones. In this work, we construct a simple and unambiguous approach to probe practical quantum advantage for generative modeling by measuring the algorithm's generalization performance. Using the sample-based approach proposed here, any generative model, from state-of-the-art classical generative models such as GANs to quantum models such as Quantum Circuit Born Machines, can be evaluated on the same ground on a concrete well-defined framework. In contrast to other sample-based metrics for probing practical generalization, we leverage constrained optimization problems (e.g., cardinality-constrained problems) and use these discrete datasets to define specific metrics capable of unambiguously measuring the quality of the samples and the model's generalization capabilities for generating data beyond the training set but still within the valid solution space. Additionally, our metrics can diagnose trainability issues such as mode collapse and overfitting, as we illustrate when comparing GANs to quantum-inspired models built out of tensor networks. Our simulation results show that our quantum-inspired models have up to a $68 \times$ enhancement in generating unseen unique and valid samples compared to GANs, and a ratio of 61:2 for generating samples with better quality than those observed in the training set. We foresee these metrics as valuable tools for rigorously defining practical quantum advantage in the domain of generative modeling.