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R&D and productivity: evidence from large UK establishments with substantial R&D activities

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  • Stephen R. Bond
  • Irem Guceri

Abstract

We use Office for National Statistics' micro data for large UK establishments in the production industries in the period 1997–2008 to study the relationship between their productivity and the presence of substantial R&D activities, either at the production unit itself, or at other UK reporting units owned by the same enterprise group. We estimate that total factor (revenue) productivity is on average about 14% higher at the establishments which have substantial R&D themselves, compared to those with no R&D. Among the establishments with no R&D themselves, we estimate that productivity is on average about 9% higher at those which belong to enterprise groups which do have substantial R&D elsewhere in the UK in the same sub-sector. For the establishments with substantial R&D themselves, we also estimate a significant positive relationship between current productivity and past R&D expenditure using dynamic specifications which allow for both establishment-specific ‘fixed effects’ and a serially correlated error component.

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  • Stephen R. Bond & Irem Guceri, 2017. "R&D and productivity: evidence from large UK establishments with substantial R&D activities," Economics of Innovation and New Technology, Taylor & Francis Journals, vol. 26(1-2), pages 108-120, February.
  • Handle: RePEc:taf:ecinnt:v:26:y:2017:i:1-2:p:108-120
    DOI: 10.1080/10438599.2016.1203525
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