Generative Adversarial Networks are becoming a fundamental tool in Machine Learning, in particular in the context of improving the stability of deep neural networks. At the same time, recent advances in Quantum Computing have shown that, despite the absence of a fault-tolerant quantum computer so far, quantum techniques are providing exponential advantage over their classical counterparts. We develop a fully connected Quantum Generative Adversarial network and show how it can be applied in Mathematical Finance, with a particular focus on volatility modelling.
翻译:产生反向网络正在成为机器学习的基本工具,特别是在改善深层神经网络稳定的背景下;与此同时,量子计算系统最近的进展表明,尽管迄今为止还没有一台容错量计算机,量子技术比古典计算机具有指数优势;我们开发了完全连接的量子生成反向网络,并展示了如何将其应用于数学融资,特别侧重于波动模型。