| Literature DB >> 27069846 |
Rune Dahl Fitjar1, Martin Gjelsvik2, Andrés Rodríguez-Pose3.
Abstract
This paper assesses the extent to which the organization of the innovation effort in firms, as well as the geographical scale at which this effort is pursued, affects the capacity to benefit from product innovations. Three alternative modes of organization are studied: hierarchy, market and triple-helix-type networks. Furthermore, we consider triple-helix networks at three geographical scales: local, national and international. These relationships are tested on a random sample of 763 firms located in five urban regions of Norway which reported having introduced new products or services during the preceding 3 years. The analysis shows that firms exploiting internal hierarchy or triple-helix networks with a wide range of partners managed to derive a significantly higher share of their income from new products, compared to those that mainly relied on outsourcing within the market. In addition, the analysis shows that the geographical scale of cooperation in networks, as well as the type of partner used, matters for the capacity of firms to benefit from product innovation. In particular, firms that collaborate in international triple-helix-type networks involving suppliers, customers and R&D institutions extract a higher share of their income from product innovations, regardless of whether they organize the processes internally or through the network.Entities:
Keywords: Firms; Markets; Networks; Norway; Organization; Outsourcing; Triple helix
Year: 2014 PMID: 27069846 PMCID: PMC4804719 DOI: 10.1186/s40604-014-0003-0
Source DB: PubMed Journal: Triple Helix (Heidelb) ISSN: 2197-1927
Figure 1Frequency distribution of
OLS and robust regression estimations of the empirical models
|
|
|
|
|
|
|---|---|---|---|---|
| Internal | 0.59*** (0.12) | 0.55*** (0.12) | 0.59*** (0.12) | 0.54*** (0.12) |
| Cooperation | 0.23* (0.12) | 0.20 (0.12) | 0.22* (0.12) | 0.19 (0.12) |
| New-to-market | 0.24*** (0.08) | 0.19** (0.08) | 0.19** (0.08) | 0.15* (0.08) |
| Regional partners | −0.00 (0.02) | −0.01 (0.02) | ||
| National partners | 0.03 (0.03) | 0.02 (0.03) | ||
| International partners | 0.10*** (0.03) | 0.10*** (0.03) | ||
| Company size | −0.18*** (0.04) | −0.21*** (0.04) | −0.18*** (0.04) | −0.20*** (0.04) |
| Foreign ownership | 0.05 (0.10) | −0.07 (0.11) | −0.01 (0.11) | −0.14 (0.11) |
| Mining | 0.42 (0.31) | 0.38 (0.31) | 0.40 (0.32) | 0.30 (0.31) |
| Manufacturing | −0.29*** (0.10) | −0.27***(0.10) | −0.30*** (0.10) | −0.30*** (0.10) |
| Electricity, gas and water supplies | −0.15 (0.21) | −0.16 (0.29) | −0.23 (0.74) | −0.24 (0.73) |
| Construction | −0.15 (0.16) | −0.08 (0.16) | −0.25 (0.15) | −0.18 (0.15) |
| Wholesale and retail trade | −0.27** (0.11) | −0.25** (0.11) | −0.29** (0.11) | −0.28** (0.12) |
| Hotels and restaurants | −0.39** (0.16) | −0.31* (0.17) | −0.44** (0.18) | −0.36** (0.17) |
| Transport and communications | −0.13 (0.17) | −0.10 (0.16) | −0.09 (0.16) | −0.07 (0.16) |
| Financial services | −0.76*** (0.24) | −0.77*** (0.24) | −0.69*** (0.21) | −0.70*** (0.21) |
| Constant | 3.06*** (0.18) | 3.03*** (0.20) | 3.15*** (0.18) | 3.15*** (0.18) |
| Number | 752 | 752 | 752 | 752 |
|
| 0.12 | 0.14 |
Table shows regression coefficients, with robust standard errors enclosed in parentheses. * = P<0.10, ** = P<0.05, *** = P<0.01.
Figure 2Effect of innovation mode on income share from innovations.
Figure 3Effect of international partners on income share from innovations. The bars on the x-axis indicate the frequency of firms in each category of international partners.
OLS regression estimations: testing for type of partner
|
|
|
|
|---|---|---|
| Internal | 0.56*** (0.13) | 0.57*** (0.13) |
| Cooperation | 0.20 (0.13) | 0.21 (0.13) |
| New-to-market | 0.21*** (0.08) | 0.21*** (0.08) |
| Supply-chain partners (only) | 0.31* (0.17) | 0.37* (0.19) |
| Competitor partners | −0.06 (0.08) | −0.06 (0.08) |
| Consultancy partners | −0.03 (0.08) | −0.03 (0.08) |
| R&D partners (only) | 0.17** (0.08) | 0.49 (0.43) |
| Supply-chain and R&D partners | 0.53*** (0.19) | |
| Company size | −0.20*** (0.04) | −0.20*** (0.04) |
| Foreign ownership | 0.04 (0.10) | 0.04 (0.10) |
| Industry fixed effects | Yes | Yes |
| Constant | 2.82*** (0.25) | 2.77*** (0.27) |
| Number | 752 | 752 |
|
| 0.13 | 0.13 |
Table shows regression coefficients, with robust standard errors enclosed in parentheses. * = P<0.10, ** = P<0.05, *** = P<0.01.
OLS regression estimations: interacting with type of partner
|
|
|
|---|---|
| Internal with no supply-chain or R&D partners | Baseline |
| Internal + R&D partners | 0.50 (0.77) |
| Internal + supply-chain partners | 0.54** (0.25) |
| Internal + supply-chain + R&D partners | 0.75*** (0.25) |
| Cooperation with no supply-chain or R&D partners | −0.04 (0.40) |
| Cooperation + R&D partners | 0.85*** (0.25) |
| Cooperation + supply-chain partners | 0.21 (0.25) |
| Cooperation + supply-chain + R&D partners | 0.28 (0.26) |
| External with no supply-chain or R&D partners | −0.01 (0.56) |
| External + R&D partners | 0.18 (0.39) |
| External + supply-chain partners | −0.03 (0.28) |
| External + supply-chain + R&D partners | 0.05 (0.31) |
| New-to-market | 0.21*** (0.08) |
| Company size | −0.20*** (0.04) |
| Foreign ownership | 0.04 (0.10) |
| Industry fixed effects | Yes |
| Constant | 3.11*** (0.29) |
| Number | 752 |
|
| 0.14 |
Table shows regression coefficients, with robust standard errors enclosed in parentheses. * = P<0.10, ** = P<0.05, *** = P<0.01.