Evaluating Green Productivity Gains with the Exponential By-Production Technology: an Analysis of the Chinese Industrial Sector.

Environmental modeling and assessment Pub Date : 2022-01-01 Epub Date: 2022-08-03 DOI:10.1007/s10666-022-09849-y
Zhiyang Shen, Tomas Baležentis, Michael Vardanyan
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引用次数: 5

Abstract

The conventional convexity assumptions frequently placed on piecewise linear frontiers of production technologies modeled using data envelopment analysis imply non-increasing marginal products. Assuming geometric convexity in the context of the exponential technology represents a more general alternative that imposes no underlying restrictions on the marginal products, while simultaneously reducing the impact of the outlying observations. In this paper, we propose an exponential by-production technology capable of generating the outputs deemed undesirable from the society's point of view. We subsequently rely on this technology to measure environmental productivity. Our empirical illustration uses data from the Chinese industrial sector, which is both a major energy consumer and polluter. By comparing our findings with the results from a conventional production model we demonstrate that our proposed indicator mitigates the impact of outlying observations when gauging the contributions of inputs and outputs to green growth. Our results suggest that the Chinese industrial sector experienced the annual productivity growth rate of around 0.40% during 1999-2016 and that the green productivity was mostly driven by technological progress. We also demonstrate that technological progress has been a bigger contributor to the growth in industrial output in China's east than its inland or western regions.

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基于指数副产技术的绿色生产力收益评价——以中国工业部门为例。
使用数据包络分析建模的生产技术分段线性前沿的传统凸性假设通常意味着边际产品不增加。在指数技术的背景下,假设几何凸性代表了一种更普遍的选择,它对边际产品没有潜在的限制,同时减少了外围观测值的影响。在本文中,我们提出了一种指数副产技术,能够产生从社会的角度来看不受欢迎的产出。我们随后依靠这项技术来衡量环境生产力。我们的实证说明使用了中国工业部门的数据,这既是一个主要的能源消耗者,也是一个主要的污染者。通过将我们的研究结果与传统生产模型的结果进行比较,我们证明,在衡量投入和产出对绿色增长的贡献时,我们提出的指标减轻了外围观测值的影响。研究结果表明,1999-2016年中国工业部门生产率年增长率约为0.40%,绿色生产率主要由技术进步驱动。我们还证明,技术进步对中国东部工业产出增长的贡献大于内陆和西部地区。
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