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FORECASTING THE NEW ENERGY INDEX TRADING AMOUNT IN CHINA MAINLAND: A MACHINE LEARNING FRAMEWORK EMPLOYING GAUSSIAN PROCESS REGRESSION TUNED WITH BAYESIAN OPTIMIZATION

Bingzi Jin, Xiaojie Xu

2025International Journal of Big Data Mining for Global Warming9 citationsDOI

Abstract

The precise forecasting of trading amounts in energy indices persists as a significant concern for financial stakeholders and oversight institutions. This study fills a notable void in prior research by concentrating on predicting daily trading amounts for China’s new energy index from 2016 to 2020 — a crucial economic metric historically underexplored in the literature. The forecasting approach integrates Gaussian process regression (GPR) methodologies, with model optimization advanced through 10-fold cross-validation procedures and Bayesian parameter tuning. Experimental results validate the framework’s efficacy, attaining an out-of-sample relative root mean square error (RRMSE) value of 16.8197% during the 2020 evaluation phase, consistent with recognized precision standards in economic forecasting. These analytical instruments yield actionable insights for developing investment strategies and crafting regulatory measures, facilitating evidence-based decision-making frameworks. Additionally, the proposed analytical approach exhibits adaptability potential, offering transferable principles for the development and assessment of comparable energy benchmarks in global financial ecosystems.

Topics & Concepts

Gaussian processMetric (unit)Bayesian probabilityComputer scienceEconometricsMachine learningBayesian optimizationArtificial intelligenceIndex (typography)Energy (signal processing)AdaptabilityRegressionRealized varianceProcess (computing)KrigingRelative valueBayesian inferenceData miningPerformance metricProcess capability indexEconomicsRegression analysisRandom forestInvestment (military)GaussianTechnology forecastingOverfittingMathematical optimizationEconomic forecastingOperations researchEnergy Load and Power ForecastingStock Market Forecasting MethodsMarket Dynamics and Volatility