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Modelling world energy security data from multinomial distribution by generalized linear model under different cumulative link functions

机译:不同累积链接函数下广义线性模型的多项式分布世界能源安全数据建模

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AbstractEnergy security is one of the major components of energy sustainability in the world’s energy performance. In this study, energy security is taken as an ordinal response variable coming from the multinomial distribution with the energy grade levels A, B, C, and D. Thereafter, the world energy security data is tried to be statistically modelled by using generalized linear model (GLM) approach for the ordinal response variable under different cumulative link functions. The cumulative link functions comparatively used in this study are cumulative logit, cumulative probit, cumulative complementary log-log, cumulative Cauchit, and cumulative negative log-log. In order to avoid a multicollinearity problem in the data structure, principal component analysis (PCA) technique is integrated with the GLM approach for the ordinal response variable. In this study, statistically, the importance of determining the best cumulative link function on the accuracy of parameter estimates, confidence intervals, and hypothesis tests in the GLM for the multinomially distributed response variable is highlighted. In terms of energy evaluation, by using cumulative logit as the best cumulative link function, energy sources consumptions, electricity productions from nuclear energy, natural gas, oil, coal, and hydroelectric, energy use per capita and energy imports are found to have statistically significant effects on energy security in the world’s energy performance.
机译:摘要能源安全是全球能源绩效中能源可持续性的主要组成部分之一。在这项研究中,能源安全被视为来自能源等级等级A,B,C和D的多项式分布的序数响应变量。此后,尝试使用广义线性模型对世界能源安全数据进行统计建模。 (GLM)方法用于不同累积链接函数下的序数响应变量。在本研究中比较使用的累积链接函数是累积logit,累积概率,累积互补对数日志,累积Cauchit和累积负对数日志。为了避免数据结构中的多重共线性问题,对于顺序响应变量,将主成分分析(PCA)技术与GLM方法集成在一起。在统计学上,这项研究强调了确定最佳累积链接函数对参数估计,置信区间和GLM中多项式分布响应变量的假设检验的准确性的重要性。在能源评估方面,通过使用累积对数作为最佳的累积联系函数,能源消耗,核能,天然气,石油,煤炭和水力发电的发电量,人均能源使用量和能源进口量在统计上都显着在世界能源绩效中对能源安全的影响。

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  • 来源
    《Open Chemistry》 |2018年第1期|共9页
  • 作者

    Neslihan Iyit;

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  • 正文语种
  • 中图分类 化学;
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  • 入库时间 2022-08-18 13:15:03

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