Open Access

A Study of Methods to Identify Industry-University-Research Institution Cooperation Partners based on Innovation Chain Theory


Cite

Arundel, A., & Geuna, A. (2004). Proximity and the use of public science by innovative European firms. Economics of Innovation & New Technology, 13(6), 559–580.ArundelA.GeunaA.2004Proximity and the use of public science by innovative European firmsEconomics of Innovation & New Technology13655958010.1080/1043859092000234311Search in Google Scholar

Bamfield, P. (2006). Research and development in the chemical and pharmaceutical industry. John Wiley & Sons.BamfieldP.2006Research and development in the chemical and pharmaceutical industryJohn Wiley & Sons10.1002/3527608834Search in Google Scholar

Barber, M.J. (2007). Modularity and community detection in bipartite networks. Physical Review E Statistical Nonlinear & Soft Matter Physics, 76(2), 066102.BarberM.J.2007Modularity and community detection in bipartite networksPhysical Review E Statistical Nonlinear & Soft Matter Physics76206610210.1103/PhysRevE.76.06610218233893Search in Google Scholar

Baxter, G., Dorogovtsev, S., Goltsev, A., & Mendes, J. (2012). Handbook of Optimization in Complex Networks. Optimization, 57, 229–252. https://doi.org/10.1007/978-1-4614-0754-6.BaxterG.DorogovtsevS.GoltsevA.MendesJ.2012Handbook of Optimization in Complex NetworksOptimization57229252https://doi.org/10.1007/978-1-4614-0754-610.1007/978-1-4614-0754-6Search in Google Scholar

Blondel, V.D., Guillaume, J.L., Lambiotte R., & Lefebvre, E. (2008). Fast unfolding of communities in large networks. Journal of statistical mechanics, (10), 155–168.BlondelV.D.GuillaumeJ.L.LambiotteR.LefebvreE.2008Fast unfolding of communities in large networksJournal of statistical mechanics1015516810.1088/1742-5468/2008/10/P10008Search in Google Scholar

Bruneel, J., ďEste, P., & Salter, A. (2010). Investigating the factors that diminish the barriers to university–industry collaboration. Research Policy, 39(7), 858–868.BruneelJ.ďEsteP.SalterA.2010Investigating the factors that diminish the barriers to university–industry collaborationResearch Policy39785886810.1016/j.respol.2010.03.006Search in Google Scholar

Cai, X., Xiao, Y.F., & Zeng, F.R. (2001). Research on knowledge-innovation-chain. Soft Science, 15(1), 2–4.CaiX.XiaoY.F.ZengF.R.2001Research on knowledge-innovation-chainSoft Science15124Search in Google Scholar

Cai, X. (2002). Innovation, innovation cluster, innovation chain and their enlightenment. R&D Management, 14(6), 35–39.CaiX.2002Innovation, innovation cluster, innovation chain and their enlightenmentR&D Management1463539Search in Google Scholar

Cao, J., Fan, D.C., & Tang, X.X. (2010). Research on the evaluation of technology innovation performance based on industry-university-research cooperation. Science& Technology Progress and Policy, 27(7), 114–118.CaoJ.FanD.C.TangX.X.2010Research on the evaluation of technology innovation performance based on industry-university-research cooperationScience & Technology Progress and Policy277114118Search in Google Scholar

Clements, C.J., & Wesselingh, S.L. (2005). Vaccine presentations and delivery technologies-what does the future hold? Expert Review of Vaccines, 4(3), 281.ClementsC.J.WesselinghS.L.2005Vaccine presentations and delivery technologies-what does the future hold?Expert Review of Vaccines4328110.1586/14760584.4.3.28116026244Search in Google Scholar

Cohen, W.M., Nelson, R.R., & Walsh, J.P. (2002). Links and impacts: the influence of public research on industrial R&D. Management science, 48(1), 1–23.CohenW.M.NelsonR.R.WalshJ.P.2002Links and impacts: the influence of public research on industrial R&DManagement science48112310.4337/9781781950241.00017Search in Google Scholar

D’Este, P., & Patel, P. (2007). University–industry linkages in the UK: What are the factors underlying the variety of interactions with industry? Research policy, 36(9), 1295–1313.D’EsteP.PatelP.2007University–industry linkages in the UK: What are the factors underlying the variety of interactions with industry?Research policy3691295131310.1016/j.respol.2007.05.002Search in Google Scholar

Fischer, M., Jähn, H., Teich, T. (2004). Optimizing the selection of partners in production networks. Robotics & Computer-Integrated Manufacturing, 20(6), 593–601.FischerM.JähnH.TeichT.2004Optimizing the selection of partners in production networksRobotics & Computer-Integrated Manufacturing20659360110.1016/j.rcim.2004.05.007Search in Google Scholar

Huang, M.D., Li, W.W., & Huang, J. (2017). Research on the present situation and countermeasures of the industry-university-research cooperation in China. Science & Technoloyg Progress and Policy, 34(19), 22–27.HuangM.D.LiW.W.HuangJ.2017Research on the present situation and countermeasures of the industry-university-research cooperation in ChinaScience & Technoloyg Progress and Policy34192227Search in Google Scholar

Huang, S.J. (2014). China Industrial Cluster Innovation Development Report: Learning Mechanism in Cluster Network 2011–2012. Economic management publishing house.HuangS.J.2014China Industrial Cluster Innovation Development ReportLearning Mechanism in Cluster Network 2011–2012.Economic management publishing houseSearch in Google Scholar

Incites. (2015). InCitesTM quick strat guide of InCitesTM database. http://ipscience-help.thomsonreuters.com/inCites2Live/8980-TRS/version/default/part/AttachmentData/data/InCites-Indicators-Handbook-6%2019.pdf.Incites2015InCitesTM quick strat guide of InCitesTM databasehttp://ipscience-help.thomsonreuters.com/inCites2Live/8980-TRS/version/default/part/AttachmentData/data/InCites-Indicators-Handbook-6%2019.pdfSearch in Google Scholar

Kogut, B., & Chang, S.J. (1991). Technological capabilities and Japanese foreign direct investment in the United States. Review of Economics and Statistics, 73(3), 401–413.KogutB.ChangS.J.1991Technological capabilities and Japanese foreign direct investment in the United StatesReview of Economics and Statistics73340141310.2307/2109564Search in Google Scholar

Mohnen, P., & Hoareau, C. (2003). What type of enterprise forges close links with universities and government labs? Evidence from CIS 2. Managerial and decision economics, 24(2–3), 133–145.MohnenP.HoareauC.2003What type of enterprise forges close links with universities and government labs?Evidence from CIS 2. Managerial and decision economics242–313314510.1002/mde.1086Search in Google Scholar

Larson, E.V., & Brahmakulam, I.T. (2001). Building a New Foundation for Innovation. Rand Corporation.LarsonE.V.BrahmakulamI.T.2001Building a New Foundation for InnovationRand CorporationSearch in Google Scholar

Laursen, K., & Salter, A. (2006). Open for innovation: the role of openness in explaining innovation performance among UK manufacturing firms. Strategic management journal, 27(2), 131–150.LaursenK.SalterA.2006Open for innovation: the role of openness in explaining innovation performance among UK manufacturing firmsStrategic management journal27213115010.1002/smj.507Search in Google Scholar

Leydesdorff, L., & Etzkowitz, H. (1996). Emergence of a Triple Helix of university-industry-government relations. Science & public policy, 23(5), 279–286.LeydesdorffL.EtzkowitzH.1996Emergence of a Triple Helix of university-industry-government relationsScience & public policy235279286Search in Google Scholar

Liang, Y.M. (2007). A new strategy on the bilateral technical cooperation. Guangzhou. (Jinan University M.S. dissertation)LiangY.M.2007A new strategy on the bilateral technical cooperationGuangzhou(Jinan University M.S. dissertation)Search in Google Scholar

Li, W.H., Wang, C.H., & An, N. (2008). Analysis of the relationship and mode between Subject and object of industry-unniversity-research cooperation based on innovation system. Science and Technology Management Research, 28(6), 4–5.LiW.H.WangC.H.AnN.2008Analysis of the relationship and mode between Subject and object of industry-unniversity-research cooperation based on innovation systemScience and Technology Management Research28645Search in Google Scholar

Park, I., Jeong, Y., Yoon, B., & Mortara, L. (2015). Exploring potential R&D collaboration partners through patentanalysis based on bibliographic coupling and latent semantic analysis. Technology Analysis & Strategic Management, 27(7), 759–781.ParkI.JeongY.YoonB.MortaraL.2015Exploring potential R&D collaboration partners through patentanalysis based on bibliographic coupling and latent semantic analysisTechnology Analysis & Strategic Management27775978110.1080/09537325.2014.971004Search in Google Scholar

Newman, M.E. (2003). The structure and function of complex networks. SIAM review, 45(2), 167–256.NewmanM.E.2003The structure and function of complex networksSIAM review45216725610.1137/S003614450342480Search in Google Scholar

Newman, M.E., & Girvan, M. (2004).Finding and evaluating community structure in networks. Physical Review E Statistical Nonlinear & Soft Matter Physics, 69(2), 026113.NewmanM.E.GirvanM.2004Finding and evaluating community structure in networksPhysical Review E Statistical Nonlinear & Soft Matter Physics69202611310.1103/PhysRevE.69.026113Search in Google Scholar

Qing, T., & Liu, S. (2016). Construction of industry-university-research cooperation innovation system in Chengdu. China Journal of Commerce, (29), 135–137.QingT.LiuS.2016Construction of industry-university-research cooperation innovation system in ChengduChina Journal of Commerce29135137Search in Google Scholar

Reuters, T. (2015). Thomson Data Analyzer. https://clarivate.com/wp-content/uploads/2017/10/IP_Derwent_Data_Analyzer.pdfReutersT.2015Thomson Data Analyzer.https://clarivate.com/wp-content/uploads/2017/10/IP_Derwent_Data_Analyzer.pdfSearch in Google Scholar

Reuters, T. (2015). Derwent innovations index.Thomson Reuters.ReutersT.2015Derwent innovations indexThomson ReutersSearch in Google Scholar

Santoro, M.D., & Gopalakrishnan, S. (2000). The institutionalization of knowledge transfer activities within industry-university collaborative ventures. Journal of engineering and technology management, 17(3–4), 299–319.SantoroM.D.GopalakrishnanS.2000The institutionalization of knowledge transfer activities within industry-university collaborative venturesJournal of engineering and technology management173–429931910.1016/S0923-4748(00)00027-8Search in Google Scholar

Shen H. Data show the conversion rate of scientific and technological achievements in China is less than 30%, China Economic Net. Retrieved from http://www.ce.cn/xwzx/gnsz/gdxw/201601/25/t20160125_8520630.shtml.ShenH.Data show the conversion rate of scientific and technological achievements in China is less than 30%, China Economic NetRetrieved fromhttp://www.ce.cn/xwzx/gnsz/gdxw/201601/25/t20160125_8520630.shtmlSearch in Google Scholar

Slotte, V., & Tynjälä, P. (2003). Industry–university collaboration for continuing professional development. Journal of Education & Work, 16(4), 445–464.SlotteV.TynjäläP.2003Industry–university collaboration for continuing professional developmentJournal of Education & Work16444546410.1080/1363908032000093058Search in Google Scholar

Solesvik, M.Z., & Encheva, S. (2010). Partner selection for interfirm collaboration in ship design. Industrial Management & Data Systems, 110(5), 701–717.SolesvikM.Z.EnchevaS.2010Partner selection for interfirm collaboration in ship designIndustrial Management & Data Systems110570171710.1007/978-3-642-04265-2_20Search in Google Scholar

Tang, Y.L., Song, G.C., & Liang, W.C. (2005). Research progress and applicaton of genetic engineering vaccines. Jilin Journal of Animal husbandry and veterunary medicine, 12, 18–20.TangY.L.SongG.C.LiangW.C.2005Research progress and applicaton of genetic engineering vaccinesJilin Journal of Animal husbandry and veterunary medicine121820Search in Google Scholar

Timmers, P. (2002). Building effective public R&D programs. Portland International Conference on Management of Engineering and Technology, 1999. Technology and Innovation Management. Picmet. IEEE, 2, 591–597.TimmersP.2002Building effective public R&D programs. Portland International Conference on Management of Engineering and Technology, 1999. Technology and Innovation Management. PicmetIEEE2591597Search in Google Scholar

Wang, T.C., & Chen, Y.H. (2007). Applying consistent fuzzy preference relations to partnership selection. Omega, 35(4), 384–388.WangT.C.ChenY.H.2007Applying consistent fuzzy preference relations to partnership selectionOmega35438438810.1016/j.omega.2005.07.007Search in Google Scholar

Wang, X.F., Wang, Z.N., Huang, Y., Liu, Y.Q., Zhang, J., Heng, X.F., & Zhu D.H. (2017). Identifying R&D partners through subject-action-object semantic analysis in a problem & solution pattern. Technology Analysis and Strategic Management, 1–14.WangX.F.WangZ.N.HuangY.LiuY.Q.ZhangJ.HengX.F.ZhuD.H.2017Identifying R&D partners through subject-action-object semantic analysis in a problem & solution patternTechnology Analysis and Strategic Management11410.1080/09537325.2016.1277202Search in Google Scholar

Wen, F.F. (2012). Study on patent collaboration patterns based on co-inventorship bibliometrics. Wuhan University.WenF.F.2012Study on patent collaboration patterns based on co-inventorship bibliometricsWuhan UniversitySearch in Google Scholar

Xie, K.F., & Liu, H.L. (2006). Game analysis of R&D entities basesd on industry-unniversity-research institute cooperation. Science of Science and management of S. &T., 27(10), 27–30.XieK.F.LiuH.L.2006Game analysis of R&D entities basesd on industry-unniversity-research institute cooperationScience of Science and management of S. & T.27102730Search in Google Scholar

Xu, H.Y., Qi, Y., Yue, Z.H., & Fang, S. (2015). Measurment methods and application research of triple helix model in collaborative innovation management. Journal of the China Society for Scientific and Technical Information, 34(3), 236–246.XuH.Y.QiY.YueZ.H.FangS.2015Measurment methods and application research of triple helix model in collaborative innovation managementJournal of the China Society for Scientific and Technical Information343236246Search in Google Scholar

Xu, H.Y., Wang, C., Dong, K., Wei, L., & Pang, H.S. (2017). Methods to identify potential industry–university-research institutions cooperation partners based on the knowledge spillovers effects in the Innovation chain. Journal of the China Society for Scientific and Technical Information, 36(7), 682–694.XuH.Y.WangC.DongK.WeiL.PangH.S.2017Methods to identify potential industry–university-research institutions cooperation partners based on the knowledge spillovers effects in the Innovation chainJournal of the China Society for Scientific and Technical Information367682694Search in Google Scholar

Yoon, B., & Song, B. (2014). A systematic approach of partner selection for open innovation. Industrial Management & Data Systems, 114(7), 1068–1093.YoonB.SongB.2014A systematic approach of partner selection for open innovationIndustrial Management & Data Systems11471068109310.1108/IMDS-03-2014-0086Search in Google Scholar

Yue, Z.H., Xu, H.Y., & Fang, S. (2015). Modeling knowledge diffusion in scientific collaboration network based on structural parameters. Journal of the China Society for Scientific and Technical Information, 34(5), 471–483.YueZ.H.XuH.Y.FangS.2015Modeling knowledge diffusion in scientific collaboration network based on structural parametersJournal of the China Society for Scientific and Technical Information345471483Search in Google Scholar

Zhang, L. (2012). Choice of Partners for the Cooperative Innovation of Industries, Universities and Research Institutes by Game Analysis. Science and Technology Management Research, (19), 218–223.ZhangL.2012Choice of Partners for the Cooperative Innovation of Industries, Universities and Research Institutes by Game AnalysisScience and Technology Management Research19218223Search in Google Scholar

Zheng, Y.L. (2015). Study on formation mechanism of generic technology cooperative R&D based on evolutinary game theory. Chongqing. (Chongqing University Ph.D. dissertation)ZhengY.L.2015Study on formation mechanism of generic technology cooperative R&D based on evolutinary game theoryChongqingChongqing University Ph.D. dissertationSearch in Google Scholar

eISSN:
2543-683X
Language:
English
Publication timeframe:
4 times per year
Journal Subjects:
Computer Sciences, Information Technology, Project Management, Databases and Data Mining