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Eco-efficiency measurement of industrial sectors in China: A hybrid super-efficiency DEA analysis

机译:中国工业部门的生态效率衡量:混合超效率DEA分析

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Eco-efficiency is of great significance in the attainment of a sustainable society, and is the most severe issue facing industrial sectors in China. In this work, a hybrid super-efficiency data envelopment analysis (DEA) was conducted to measure eco-efficiency and analyze the problem of inefficiency facing industrial sectors in China. DEA has been widely used in eco-efficiency analysis; however, existing DEA models focus on the evolution and comparison of eco-efficiency values, and do not consider the evolution characteristics of the input nor undesirable output inefficiency and neglect the radial and non-radial classifications of input and output indices simultaneously. Thus, this work proposes a hybrid super efficiency DEA model which combines hybrid DEA with super-efficiency DEA, separating the input and undesirable output variables into radial and non-radial parts using variable correlations. For the panel data of the industrial sectors, the Malmquist index is introduced in this approach. Subsequently, this approach is illustrated using a real data set from 22 industrial sectors in China corresponding to the period of 2006-2015. Results show that eco-efficiencies of the 22 industrial sectors increased consistently from 2006 to 2015. Due to a lack of momentum in sustained growth, technological progress regarding the improvement of eco-efficiency requires acceleration. More and more sectors have achieved rapid enhancements in input and undesirable output inefficiencies, but 10 traditional sectors with high resource consumption and heavy emissions of pollutants remain inefficient. (C) 2019 Elsevier Ltd. All rights reserved.
机译:生态效率对实现可持续发展社会具有重要意义,并且是中国工业部门面临的最严峻问题。在这项工作中,进行了混合超效率数据包络分析(DEA),以测量生态效率并分析中国工业部门面临的效率低下的问题。 DEA已被广泛用于生态效率分析。然而,现有的DEA模型专注于生态效率值的演变和比较,既没有考虑输入的演变特征,也没有考虑不期望的输出效率低下,而没有同时考虑输入和输出指标的径向和非径向分类。因此,这项工作提出了一种混合超效率DEA模型,该模型将混合DEA与超效率DEA相结合,使用变量相关性将输入变量和不良输出变量分为径向和非径向部分。对于工业部门的面板数据,采用这种方法引入了Malmquist指数。随后,使用来自中国22个行业的真实数据集(对应于2006-2015年)对这种方法进行了说明。结果表明,从2006年到2015年,这22个工业部门的生态效率一直在增长。由于缺乏持续增长的动力,因此需要加快有关提高生态效率的技术进步。越来越多的部门实现了输入效率的快速提高和不良的输出效率低下,但是资源消耗高且污染物排放量高的10个传统部门仍然没有效率。 (C)2019 Elsevier Ltd.保留所有权利。

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