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Using information about technologies, markets and firm behaviour to decompose a proper productivity index

机译:使用有关技术,市场和公司行为的信息来分解适当的生产率指数

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This paper uses distance functions to define new output and input quantity indexes that satisfy important axioms from index number theory (e.g., identity, transitivity, proportionality and time-space reversal). Dividing the output index by the input index yields a new productivity index that can be decomposed into a measure of technical change, a measure of environmental change, and several measures of efficiency change. A problem with this new index is that it cannot be computed without estimating the production frontier. The paper shows how assumptions concerning technologies, markets and firm behaviour can be used to inform the estimation process. The focus is on the asymptotic properties of least squares estimators when the explanatory variables in the production frontier model are endogenous. In this case, the ordinary least squares estimator is usually inconsistent. However, there is one situation where it is super-consistent. A fully-modified ordinary least squares estimator is also available in this case. To illustrate the main ideas, the paper uses US state-level farm data to estimate a stochastic production frontier. The parameter estimates are then used to obtain estimates of the economically relevant components of productivity change. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文使用距离函数来定义新的输出和输入数量指标,这些指标满足了指标数论的重要公理(例如,同一性,传递性,比例性和时空反转)。用输出指数除以输入指数可得出新的生产率指数,可以将其分解为技术变化,环境变化和效率变化的几种度量。这个新索引的问题在于,如果不估计生产边界,就无法计算它。本文说明了有关技术,市场和公司行为的假设如何可以用于估计过程。当生产前沿模型中的解释变量是内生的时,重点是最小二乘估计的渐近性质。在这种情况下,通常的最小二乘估计量通常是不一致的。但是,在一种情况下,它是超级一致的。在这种情况下,也可以使用经过完全修改的普通最小二乘估计器。为了说明主要思想,本文使用美国州级农场数据来估计随机生产边界。然后,将参数估计值用于获得生产率变化的经济相关成分的估计值。 (C)2015 Elsevier B.V.保留所有权利。

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