Skip to main content
European Economic ReviewVolume 78, August 01, 2015, Pages 285-306

Dynamic models of R & D, innovation and productivity: Panel data evidence for Dutch and French manufacturing(Article)(Open Access)

  Save all to author list
  • aInstitut National de la Statistique et des Études Économiques (STATEC), EPR2 Unit, 13 Rue Erasme, BP304, L-2013, Luxembourg
  • bCREST-Timbre J390, 15 Boulevard Gabriel Péri, Malakoff Cedex, 92245, France
  • cUNU-MERIT, Maastricht University and CIRANO, University of Maastricht, P.O. Box 616, Maastricht, 6200 MD, Netherlands
  • dMaastricht University, Department of Quantitative Economics, P.O. Box 616, Maastricht, 6200 MD, Netherlands

Abstract

This paper introduces dynamics in the R&D-to-innovation and innovation-to-productivity relationships, which have mostly been estimated on cross-sectional data. It considers four nonlinear dynamic simultaneous equations models that include individual effects and idiosyncratic errors correlated across equations and that differ in the way innovation enters the conditional mean of labor productivity: through an observed binary indicator, an observed intensity variable or through the continuous latent variables that correspond to the observed occurrence or intensity. It estimates these models by full information maximum likelihood using two unbalanced panels of Dutch and French manufacturing firms from three waves of the Community Innovation Survey. The results provide evidence of robust unidirectional causality from innovation to productivity and of stronger persistence in productivity than in innovation. © 2015 Elsevier B.V.

Author keywords

DynamicsInnovationPanel dataProductivityR&DSimultaneous equations

Indexed keywords

GEOBASE Subject Index:equationinnovationmanufacturingmodelingpanel dataproductivityresearch and development
Regional Index:FranceNetherlands
  • ISSN: 00142921
  • Source Type: Journal
  • Original language: English
  • DOI: 10.1016/j.euroecorev.2015.06.002
  • Document Type: Article
  • Publisher: Elsevier

  Mohnen, P.; UNU-MERIT, Maastricht University and CIRANO, University of Maastricht, P.O. Box 616, Maastricht, Netherlands
© Copyright 2015 Elsevier B.V., All rights reserved.

Cited by 43 documents

de Vries, G. , Jiang, A. , Lemmers, O.
Firm productivity and functional specialisation
(2021) World Economy
Chen, Z. , Zhang, J. , Zi, Y.
A cost-benefit analysis of R&D and patents: Firm-level evidence from China
(2021) European Economic Review
Sun, Z. , Wang, X. , Liang, C.
The impact of heterogeneous environmental regulation on innovation of high-tech enterprises in China: mediating and interaction effect
(2021) Environmental Science and Pollution Research
View details of all 43 citations
{"topic":{"name":"Community Innovation Survey; Marketing Innovation; Manufacturing Firms","id":23243,"uri":"Topic/23243","prominencePercentile":93.71045,"prominencePercentileString":"93.710","overallScholarlyOutput":0},"dig":"f40ffb201b1570d96e220136cec0952feb62017fb32523ec90b3b7029f8c573d"}

SciVal Topic Prominence

Topic:
Prominence percentile: