A lasso regression-based forecasting model for daily gasoline consumption: Türkiye Case

Ertugrul Ayyıldız, Mirac Murat
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Abstract

Gasoline is one of the most sought-after resources in the world, where the need for energy is indispensable and continuously increasing for human life today. A shortage of gasoline may negatively affect the economies of countries. Therefore, analyzes and estimates about gasoline consumption are critical. Better forecast performance on gasoline consumption can serve the policymakers, managers, researchers, and other gasoline sector stakeholders. Parallel to the world economy, gasoline consumption in Turkey is among the top among the most consumed energy source. Therefore, it is aimed at forecasting the amount of daily gasoline consumption in Turkey in this study. For this purpose, a lasso regression-based forecasting methodology is proposed. The forecasting approach used for daily gasoline consumption consisting of 3 main stages: i) cleaning the data ii) extracting and selecting features iii) forecasting the future of daily gasoline consumption time series via the proposed models. Besides, Ridge Regression is used to compare the performance of the proposed model.
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基于套索回归的日汽油消耗量预测模型:土耳其案例
汽油是世界上最抢手的资源之一,当今人类生活对能源的需求不可或缺且不断增长。汽油短缺可能会对各国经济产生负面影响。因此,对汽油消耗量的分析和估计至关重要。更好地预测汽油消耗量可以为政策制定者、管理者、研究人员和其他汽油行业利益相关者提供服务。与世界经济同步,土耳其的汽油消耗量在消耗量最大的能源中名列前茅。因此,本研究旨在预测土耳其的汽油日消费量。为此,提出了一种基于套索回归的预测方法。用于日汽油消耗量的预测方法包括 3 个主要阶段:i) 清理数据 ii) 提取和选择特征 iii) 通过建议的模型预测日汽油消耗量时间序列的未来。此外,还使用了岭回归来比较建议模型的性能。
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