

Author: Balcombe Kelvin Bailey Alastair Fraser Iain
Publisher: Springer Publishing Company
ISSN: 0895-562X
Source: Journal of Productivity Analysis, Vol.24, Iss.1, 2005-09, pp. : 49-72
Disclaimer: Any content in publications that violate the sovereignty, the constitution or regulations of the PRC is not accepted or approved by CNPIEC.
Abstract
In this paper we argue that the standard sequential reduction approach to modelling dynamic relationships may be sub-optimal when long lag lengths are required and especially when the intermediate lags may be less important. A flexible model search approach is adopted using the insights of Bayesian Model probabilities, and new information criteria based on forecasting performance. This approach is facilitated by exploiting Genetic Algorithms. Using data on U.K. and U.S. agriculture the bivariate time series relationship between R&D expenditure and productivity is analysed. Long lags are found in the relationship between R&D expenditures and productivity in the U.K. and in the U.S. which remain undiscovered when using the orthodox approach. This finding is of particular importance in the debate on the optimal level of public R&D funding.
Related content


By Kikuchi Takashi Kamoshida Akira
International Journal of Knowledge Management Studies, Vol. 3, Iss. 1-2, 2009-02 ,pp. :






Research Note: Measuring R&D Productivity
Research-Technology Management, Vol. 58, Iss. 1, 2015-01 ,pp. :


Management for enhanced R&D productivity
International Journal of Technology Management, Vol. 14, Iss. 6-7, 1997-07 ,pp. :