论文标题
量子神经网络的力量
The power of quantum neural networks
论文作者
论文摘要
容忍故障的量子计算机提供了通过加速计算或改善模型可伸缩性来大大改善机器学习的希望。但是,在近期,量子机器学习的好处并不那么清楚。了解量子模型和量子神经网络的明确性和训练性,特别是对量子的进一步研究。在这项工作中,我们使用来自信息几何形状的工具来定义量子和经典模型的表达概念。取决于Fisher信息的有效维度用于证明一种新颖的概括结合并建立了强大的表达性度量。我们表明,量子神经网络能够达到比可比的经典神经网络更好的有效维度。然后评估量子模型的训练性,我们将Fisher信息光谱与贫瘠的高原(消失梯度的问题)联系起来。重要的是,某些量子神经网络可以表现出对这种现象的韧性,并且由于其有利的优化风景而被更均匀传播的Fisher信息频谱捕获,因此比经典模型更快地训练了训练。我们的工作是第一个证明了精心设计的量子神经网络通过更高的有效维度和更快的训练能力为经典神经网络提供了优势,我们在实际量子硬件上验证了这一功能。
Fault-tolerant quantum computers offer the promise of dramatically improving machine learning through speed-ups in computation or improved model scalability. In the near-term, however, the benefits of quantum machine learning are not so clear. Understanding expressibility and trainability of quantum models-and quantum neural networks in particular-requires further investigation. In this work, we use tools from information geometry to define a notion of expressibility for quantum and classical models. The effective dimension, which depends on the Fisher information, is used to prove a novel generalisation bound and establish a robust measure of expressibility. We show that quantum neural networks are able to achieve a significantly better effective dimension than comparable classical neural networks. To then assess the trainability of quantum models, we connect the Fisher information spectrum to barren plateaus, the problem of vanishing gradients. Importantly, certain quantum neural networks can show resilience to this phenomenon and train faster than classical models due to their favourable optimisation landscapes, captured by a more evenly spread Fisher information spectrum. Our work is the first to demonstrate that well-designed quantum neural networks offer an advantage over classical neural networks through a higher effective dimension and faster training ability, which we verify on real quantum hardware.