论文标题
来自本地和汇总信息的输入输出分析中的上游和下游性
Upstreamness and downstreamness in input-output analysis from local and aggregate information
论文作者
论文摘要
全球价值链中的排名和国家对于估计大型经济体的风险和预测增长至关重要。但是,由于缺乏有关在输入输出(I-O)表中编码的部门和国家之间的货币和商品流动的完整信息,因此这项任务通常是不平凡的。在这项工作中,我们表明,在不完全了解I-O表的情况下,可以实现对供应链网络中部门和国家在供应链网络中所起的作用的准确估计,但仅依靠本地和汇总信息,例如,每个领域的总中间需求。我们的方法基于对I-O表的排名$ 1 $近似,当对来自世界输入输出输出数据库的经验数据进行测试时,在重建排名(即上游和下游度量的上游和下游度量)方面表现出良好的性能。此外,我们将近似框架的精度与I-O表的光谱特性联系起来,而I-O表的光谱特性通常显示出相对较大的光谱间隙。我们的方法提供了一个快速,可以分析的框架,可以对复杂经济的组成部分进行排名,而无需矩阵倒置和更细致的部门详细信息的知识。
Ranking sectors and countries within global value chains is of paramount importance to estimate risks and forecast growth in large economies. However, this task is often non-trivial due to the lack of complete and accurate information on the flows of money and goods between sectors and countries, which are encoded in Input-Output (I-O) tables. In this work, we show that an accurate estimation of the role played by sectors and countries in supply chain networks can be achieved without full knowledge of the I-O tables, but only relying on local and aggregate information, e.g., the total intermediate demand per sector. Our method, based on a rank-$1$ approximation to the I-O table, shows consistently good performance in reconstructing rankings (i.e., upstreamness and downstreamness measures for countries and sectors) when tested on empirical data from the World Input-Output Database. Moreover, we connect the accuracy of our approximate framework with the spectral properties of the I-O tables, which ordinarily exhibit relatively large spectral gaps. Our approach provides a fast and analytical tractable framework to rank constituents of a complex economy without the need of matrix inversions and the knowledge of finer intersectorial details.