학술논문

Carbon Price Forecasting with Quantile Regression and Feature Selection
Document Type
Conference
Source
2023 7th International Symposium on Computer Science and Intelligent Control (ISCSIC) ISCSIC Computer Science and Intelligent Control (ISCSIC), 2023 7th International Symposium on. :362-367 Oct, 2023
Subject
Computing and Processing
Adaptation models
Europe
Predictive models
Data models
Carbon
Forecasting
Task analysis
Carbon price forecasting
feature selection
quantile regression
Lasso
Language
Abstract
Carbon futures has recently emerged as a novel financial asset in the trading markets such as the European Union and China. Monitoring the trend of the carbon price has become critical for both national policy-making as well as industrial manufacturing planning. However, various geopolitical, social, and economic factors can impose substantial influence on the carbon price. Due to its volatility and nonlinearity, predicting accurate carbon prices is generally a difficult task. In this study, we propose to improve carbon price forecasting with several novel practices. First, we collect various influencing factors, including commodity prices, export volumes such as oil and natural gas, and prosperity indices. Then we select the most significant factors and disclose their optimal grouping for explainability. Finally, we use the Sparse Quantile Group Lasso and Adaptive Sparse Quantile Group Lasso for robust price predictions. We demonstrate through extensive experimental studies that our proposed methods outperform existing ones. Also, our quantile predictions provide a complete profile of future prices at different levels, which better describes the distributions of the carbon market.