In the current uncertain context that affects both the world economy and the energy sector, with the rapid increase in the prices of oil and gas and the very unstable political situation that affects some of the largest raw materials’ producers, there is a need for developing efficient and powerful quantitative tools that allow to model and forecast fossil fuel prices, CO2 emission allowances prices as well as electricity prices. This will improve decision making for all the agents involved in energy issues.ududAlthough there are papers focused on modelling fossil fuel prices, CO2 prices and electricity prices, the literature is scarce on attempts to consider all of them together. This paper focuses on both building a multivariate model for the aforementioned prices and comparing its results with those of univariate ones, in terms of prediction accuracy (univariate and multivariate models are compared for a large span of days, all in the first 4 months in 2011) as well as extracting common features in the volatilities of the prices of all these relevant magnitudes. The common features in volatility are extracted by means of a conditionally heteroskedastic dynamic factor model which allows to solve the curse of dimensionality problem that commonly arises when estimating multivariate GARCH models. Additionally, the common volatility factors obtained are useful for improving the forecasting intervals and have a nice economical interpretation.ududBesides, the results obtained and methodology proposed can be useful as a starting point for risk management or portfolio optimization under uncertainty in the current context of energy markets.
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机译:在当前影响世界经济和能源部门的不确定环境下,随着石油和天然气价格的快速上涨以及影响某些最大原材料生产商的非常不稳定的政治局势,有必要发展高效,强大的定量工具,可用于建模和预测化石燃料价格,CO2排放配额价格以及电价。这将改善涉及能源问题的所有主体的决策。 ud ud尽管有许多论文致力于模拟化石燃料价格,CO2价格和电价,但文献中却很少尝试将它们全部考虑在内。本文着重于针对上述价格建立多元模型,并将其结果与单变量模型的结果进行比较,以预测准确度为准(在2011年的前4个月中比较了大范围的单变量模型和多变量模型) ),并提取所有这些相关幅度的价格波动中的共同特征。借助条件异方差动态因子模型提取波动率的共同特征,该模型可解决在估计多元GARCH模型时常见的维数问题。此外,所获得的常见波动性因素对于改善预测间隔和具有良好的经济解释性也很重要。能源市场的背景。
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