利用潜类随机前沿模型衡量技术异质时的生产率

IF 1.9 4区 经济学 Q2 ECONOMICS Empirical Economics Pub Date : 2024-05-13 DOI:10.1007/s00181-024-02604-0
K Hervé Dakpo, Laure Latruffe, Yann Desjeux, Philippe Jeanneaux
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引用次数: 0

摘要

我们研究了如何将潜在类随机前沿模型(LCSFM)扩展到生产率估算中,以及如何将生产率变化分解为技术变化、以产出为导向的技术效率变化和规模变化。我们的生产率估算基于多类 Grifell-Tatjé、Lovell & Orea Malmquist(GLOM)指数。这一新生产率指数的优势在于考虑了各等级的后验概率,从而得出单个农场的参数。此外,我们还对分析进行了扩展,以估算元rontier GLOM 生产力指数,从而探索所有企业都使用现有最佳技术时的潜力。对 2002 年至 2021 年期间观察到的法国绵羊和山羊养殖场样本的实证应用证实了在衡量生产率变化时考虑技术异质性的必要性。在 LCSFM 确定的两类农场中,集约型农场的全要素生产率有所提高,而粗放型农场的全要素生产率则有所下降。不过,随着时间的推移,密集型技术和粗放型技术之间的差距似乎在缩小。最后,多类别 GLOM 显示,技术变革是法国山羊和绵羊养殖场生产率的主要驱动力。
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Measuring productivity when technology is heterogeneous using a latent class stochastic frontier model

We examine an extension of the latent class stochastic frontier model (LCSFM) to productivity estimation and the decomposition of productivity change into technical change, output-oriented technical efficiency change, and scale change. We base our productivity estimation on a Multi-class Grifell-Tatjé, Lovell & Orea Malmquist (GLOM) index. An advantage of this new productivity index is to account for classes' posterior probabilities to derive individual farm parameters. In addition, we extend our analysis to estimate a metafrontier GLOM productivity index to explore potentialities when all firms use the best available technologies. An empirical application to a sample of French sheep and goat farms observed between 2002 and 2021 confirms the necessity to account for technological heterogeneity when measuring productivity change. Among the two classes of farms identified by the LCSFM, the intensive class experiences TFP gains, while the extensive class sees its TFP worsening. However, the gap between intensive and extensive technologies seems to reduce over time. Finally, the multi-class GLOM reveals technical change as the primary driver of productivity for French goat and sheep farms.

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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
157
期刊介绍: Empirical Economics publishes high quality papers using econometric or statistical methods to fill the gap between economic theory and observed data. Papers explore such topics as estimation of established relationships between economic variables, testing of hypotheses derived from economic theory, treatment effect estimation, policy evaluation, simulation, forecasting, as well as econometric methods and measurement. Empirical Economics emphasizes the replicability of empirical results. Replication studies of important results in the literature - both positive and negative results - may be published as short papers in Empirical Economics. Authors of all accepted papers and replications are required to submit all data and codes prior to publication (for more details, see: Instructions for Authors).The journal follows a single blind review procedure. In order to ensure the high quality of the journal and an efficient editorial process, a substantial number of submissions that have very poor chances of receiving positive reviews are routinely rejected without sending the papers for review.Officially cited as: Empir Econ
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