The RAS method is an iterative procedure that bi-proportionally scales an input-output table to be consistent with given row and column sums. It can be used to disaggregate an annual national table to more detailed tables, such as regional, quarterly, and domestic/imported tables. However, the regular two-dimensional RAS method does not ensure the consistency of the disaggregated tables with the original table. For this problem, we use the multidimensional RAS method, which besides input and output totals, also ensures regional, quarterly, and domestic/imported totals. Our analysis of Czech industries shows that the multidimensional RAS method increases the accuracy of table estimation as well as the accuracy of the Leontief inverse, the quarterly value added, and (to some degree) the regional Isard's model. We also rigorously demonstrate its relation to the cross-entropy model.
翻译:RAS方法是一种迭接程序,对投入-产出表进行双比例的比重,使之与给定行和列总和一致,可用于将年度国家表格分列为更详细的表格,如区域表格、季度表格和国内/进口表格,然而,常规的二维RAS方法不能确保分列表格与原始表格的一致性。对于这一问题,我们使用多层面RAS方法,除了投入和产出总量之外,还确保区域、季度和国内/进口总量。我们对捷克工业的分析表明,多层面RAS方法提高了表格估算的准确性,以及Leontif的准确性、季度增加值以及(在某种程度上)区域Isard模型的准确性。我们还严格地证明它与交叉消耗模型的关系。