Labor productivity convergence in the Kansas farm sector: a three-stage procedure using data envelopment analysis and semiparametric regression analysis

被引:0
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作者
Amin W. Mugera
Michael R. Langemeier
Allen M. Featherstone
机构
[1] The University of Western Australia M089,Institute of Agriculture and School of Agriculture and Resource Economics, Faculty of Agriculture and Natural Sciences
[2] Kansas State University,Department of Agricultural Economics, 342 Waters Hall
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关键词
Labor productivity; Efficiency change; Technical change; Factor intensity; Convergence; Semiparametric regression; D24; Q12;
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摘要
This paper employs a three stage procedure to investigate labor productivity growth and convergence in the Kansas farm sector for a balanced panel of 564 farms for the period 1993–2007. In the first stage, Data Envelopment Analysis is used to compute technical efficiency indices. In the second stage, labor productivity growth is decomposed into components attributable to efficiency change, technical change, and factor intensity. The third stage employs both parametric and semiparametric regression analyses to investigate convergence in labor productivity growth and the contribution of each of the three components to the convergence process. Factor intensity and efficiency change are found to be sources of labor productivity convergence while technical change is found to be a source of divergence. Policies that encourage investment in capital goods may help to mitigate disparities in labor productivity across the farm sector.
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页码:63 / 79
页数:16
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