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Overview of missing physical commodity trade data and its imputation using data augmentation

机译:缺少实物商品贸易数据的概述及其使用数据扩充的估算

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摘要

The physical aspects of commodity trade are becoming increasingly important on a global scale for transportation planning, demand management for transportation facilities and services, energy use, and environmental concerns. Such aspects (for example, weight and volume) of commodities are vital for logistics industry to allow for medium-to-long term planning at the strategic level and identify commodity flow trends. However, incomplete physical commodity trade databases impede proper analysis of trade flow between various countries. The missing physical values could be due to many reasons such as, (I) non-compliance of reporter countries with the prescribed regulations by World Customs Organization (WCO) (2) confidentiality issues, (3) delays in processing of data, or (4) erroneous reporting. The traditional missing data imputation methods, such as the substitution by mean, substitution by linear interpolation/extrapolation using adjacent points, the substitution by regression, and the substitution by stochastic regression, have been proposed in the context of estimating physical aspects of commodity trade data. However, a major demerit of these single imputation methods is their failure to incorporate uncertainty associated with missing data. The use of computationally complex stochastic methods to improve the accuracy of imputed data has recently become possible with the advancement of computer technology. Therefore, this study proposes a sophisticated data augmentation algorithm in order to impute Missing physical commodity trade data. The key advantage of the proposed approach lies in the fact that instead of using a point estimate as the imputed value, it simulates a distribution of missing data through multiple imputations to reflect uncertainty and to maintain variability in the data. This approach also provides the flexibility to include fundamental distributional property of the variables, such as physical quantity, monetary value, price elasticity of demand, price variation, and product differentiation, and their correlations to generate reasonable average estimates of statistical inferences. An overview and limitations of most commonly used data imputation approaches is presented, followed by the theoretical basis and imputation procedure of the proposed approach. Lastly, a case study is presented to demonstrate the merits of the proposed approach in comparison to traditional imputation methods. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在全球范围内,商品贸易的有形方面对于运输计划,运输设施和服务的需求管理,能源使用以及环境问题变得越来越重要。商品的这些方面(例如重量和体积)对于物流业至关重要,以便在战略级别进行中长期规划并确定商品流动趋势。但是,不完整的实物商品贸易数据库妨碍了对各国之间贸易流的适当分析。缺少物理值的原因可能有很多,例如:(I)报告国未遵守世界海关组织(WCO)的规定(2)机密性问题,(3)数据处理延迟,或( 4)错误报告。在估计商品贸易数据的物理方面时,提出了传统的缺失数据插补方法,例如均值替代,使用相邻点的线性插值/外推替代,回归替代和随机回归替代。 。然而,这些单一插补方法的主要缺点是它们未能纳入与缺失数据相关的不确定性。随着计算机技术的进步,最近已经有可能使用计算复杂的随机方法来提高估算数据的准确性。因此,本研究提出了一种复杂的数据扩充算法,以估算缺少的实物商品贸易数据。提出的方法的主要优点在于,它不是使用点估计作为推算值,而是通过多次推算来模拟缺失数据的分布,以反映不确定性并保持数据的可变性。这种方法还提供了灵活性,可以包括变量的基本分布特性,例如实物数量,货币价值,需求的价格弹性,价格变化和产品差异及其相关性,以生成合理的统计推断平均估计。介绍了最常用的数据插补方法的概述和局限性,然后介绍了该方法的理论基础和插补过程。最后,通过案例研究证明了与传统的插补方法相比,该方法的优点。 (C)2015 Elsevier Ltd.保留所有权利。

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