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    Please use this identifier to cite or link to this item: https://tkuir.lib.tku.edu.tw/dspace/handle/987654321/127896


    Title: AN EMPIRICAL STUDY ON CARBON PRICE PREDICTION USING STACKING ENSEMBLE MACHINE LEARNING
    Authors: Liao, Chih-Feng;Zhang, Wang
    Keywords: carbon price prediction;ensemble-learning algorithm
    Date: 2024-05
    Issue Date: 2025-09-22 12:06:45 (UTC+8)
    Abstract: Carbon pricing is an essential instrument for reducing climate change and has substantial environmental protection as a co-benefit.
    This paper proposes a technique for predicting the price of carbon emission futures based on a stacking ensemble machine learning
    approach. This method incorporates the historical prices of carbon, fossil energy, and renewable energies, all of which influence
    carbon price fluctuations. Notably, there are no existing studies that employ renewable energy data and stacking ensemble models
    to forecast the futures price of European Union Allowances (EUA). By integrating diverse data sources and leveraging the power
    of ensemble learning, this research aims to fill that gap.
    The results of the experiments demonstrate that the stacking support vector regression model outperforms traditional machine
    learning models and earlier single-factor approaches in predicting future carbon prices. This superior performance is attributed to
    the model's ability to capture complex interactions among various influencing factors, thus providing more accurate and robust
    predictions. Overall, using the stacking learning model for pricing carbon has significant implications. It can lead to more informed
    policy decisions, better management of carbon markets, and more effective strategies for mitigating the impact of fossil fuels on
    the environment. By accurately forecasting carbon prices, stakeholders can enhance their planning and investment decisions,
    ultimately contributing to the reduction of pollution emissions and the advancement of sustainable energy practices. This approach
    represents a significant step forward in the utilization of advanced machine learning techniques for environmental and economic
    sustainability.
    Relation: Environmental Engineering and Management Journal 23(5), p.1047-1056
    DOI: 10.30638/eemj.2024.084
    Appears in Collections:[財務金融學系暨研究所] 期刊論文

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