Carbon market risk estimation using quantum conditional generative adversarial network and amplitude estimation

Author:

Zhou Xiyuan1ORCID,Zhao Huan2ORCID,Cao Yuji3,Fei Xiang4,Liang Gaoqi5,Zhao Junhua13ORCID

Affiliation:

1. School of Science and Engineering The Chinese University of Hong Kong Shenzhen China

2. School of Electrical and Electronic Engineering Nanyang Technological University Singapore Singapore

3. Center for Crowd Intelligence Shenzhen Institute of Artificial Intelligence and Robotics for Society (AIRS) Shenzhen Guangdong China

4. School of Data Science The Chinese University of Hong Kong Shenzhen China

5. School of Mechanical Engineering and Automation Harbin Institute of Technology, Shenzhen Shenzhen China

Abstract

AbstractAccurately and efficiently estimating the carbon market risk is paramount for ensuring financial stability, promoting environmental sustainability, and facilitating informed decision‐making. Although classical risk estimation methods are extensively utilized, the implicit pre‐assumptions regarding distribution are predominantly contained and challenging to balance accuracy and computational efficiency. A quantum computing‐based carbon market risk estimation framework is proposed to address this problem with the quantum conditional generative adversarial network‐quantum amplitude estimation (QCGAN‐QAE) algorithm. Specifically, quantum conditional generative adversarial network (QCGAN) is employed to simulate the future distribution of the generated return rate, whereas quantum amplitude estimation (QAE) is employed to measure the distribution. Moreover, the quantum circuit of the QCGAN improved by reordering the data interaction layer and data simulation layer is coupled with the introduction of the quantum fully connected layer. The binary search method is incorporated into the QAE to bolster the computational efficiency. The simulation results based on the European Union Emissions Trading System reveals that the proposed framework markedly enhances the efficiency and precision of Value‐at‐Risk and Conditional Value‐at‐Risk compared to original methods.

Funder

National Natural Science Foundation of China

Guangdong Power Grid Company

Publisher

Institution of Engineering and Technology (IET)

Reference47 articles.

1. Daskalakis G.:“Are the European Carbon Markets Efficient?”http://www.zbw.eu/econis‐archiv/handle/11159/18311(2014). Accessed 10 Sep 2023

2. A Prediction Approach for Stock Market Volatility Based on Time Series Data

3. The performance of hybrid ARIMA‐GARCH modeling and forecasting oil price;Dritsaki C.;Int. J. Energy Econ. Policy,2018

4. Conventional and downside CAPM: The case of London stock exchange

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