运用计量经济模型预测固定资产投资

IF 0.4 Q4 MATHEMATICS, APPLIED Journal of Applied Mathematics & Informatics Pub Date : 2023-02-10 DOI:10.37791/2687-0649-2023-18-1-111-128
V. Osipov, A. Tsypin, O. V. Ledneva
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引用次数: 0

摘要

该国GDP增长的关键因素之一是可再生资本,它为产品、工作和服务的生产奠定了基础。因此,对占主导地位的固定资产的状态、结构和动态的研究是统计学和计量经济学的优先任务之一。这就暗示了本研究的目的,即评估计量经济模型的预测能力。为了实现这一目标,使用了一系列数理统计和计量经济学方法,特别是表格和图表、描述性统计、相关回归和自适应建模。主要结果包括:投资结构分析没有发现新的或隐藏的模式,因此投资主要指向现代化或更新的资本密集型领域——这些是建筑、构筑物和土地(约占总投资的40%),主要产业是工业和交通运输;对固定资产的临时系列投资动态的目视分析表明,存在着长期、季节性和情景因素;通过构建反映宏观指标复杂动态的6个计量模型,可以区分属于同一组的两种自适应模型;因此,在三参数指数平滑模型和SARIMA(1,0,0)(1,1,0)[4]中可以观察到对俄罗斯固定资产投资复杂动态的最佳预测机会。在研究过程中获得的结果将对参与复杂结构时间序列建模和预测的科学家有用
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Using econometric models to forecast fixed asset investments
One of the key factors in the country’s GDP growth is reproducible capital, which lays the foundation for the production of products, works and services. Accordingly, the study of the state, structure and dynamics of the dominant component, fixed assets, is one of the priority tasks of statistics and econometrics. This implies the purpose of the study, which is to assess the predictive capabilities of econometric models. To achieve this goal, a pool of mathematical-statistical and econometric methods was used, in particular tabular and graphic, descriptive statistics, correlation-regression, adaptive modeling. The main results include: analysis of the structure of investments did not find new or hidden patterns, so investments are directed to the modernization or renewal of capital-intensive areas – these are buildings, structures and land (about 40% of the total investment), the main industries are industry and transport; visual analysis of the dynamics of the temporary series of investments in fixed assets showed the presence of a long-term, seasonal and situational component; the construction of 6 econometric models reflecting the complex dynamics of the macro indicator in question made it possible to distinguish two adaptive models belonging to the group; thus, the best forecast opportunities for complex dynamics of investments in Russian fixed assets are observed in the three-parameter exponential smoothing model and SARIMA (1,0,0)(1,1,0) [4]. The results obtained in the course of the study will be useful for scientists involved in modeling and predicting complex-structured time series
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