The implications of big data for developing and transitional economies: Extending the Triple Helix?

作者: Marko M. Skoric

DOI: 10.1007/S11192-013-1106-5

关键词:

摘要: This study examines the implications of predicted big data revolution in social sciences for research using Triple Helix (TH) model innovation and knowledge creation context developing transitional economies. While promises to transform nature inquiry improve world economy by increasing productivity competitiveness companies enhancing functioning public sector, it may also potentially lead a growing divide capabilities between developed More specifically, given uneven access digital scarcity computational resources talent, countries are at disadvantage when comes employing data-driven, methods studying TH relations universities, industries governments. Scientometric analysis literature conducted this reveals disparity their use innovative methods. As potential remedy, extension is proposed include non-market actors as subjects well providers resources, education training.

参考文章(20)
Matthew Wilkens, Matthew Gold, Debates in the Digital Humanities ,(2012)
J. Manyika, Michael Chui, Brad Brown, Jacques Bughin, Richard Dobbs, Charles Roxburgh, Angela Hung Byers, Big data: The next frontier for innovation, competition, and productivity ,(2011)
danah boyd, Kate Crawford, CRITICAL QUESTIONS FOR BIG DATA Information, Communication & Society. ,vol. 15, pp. 662- 679 ,(2012) , 10.1080/1369118X.2012.678878
Miles Osborne, Saša Petrović, Victor Lavrenko, The Edinburgh Twitter Corpus north american chapter of the association for computational linguistics. pp. 25- 26 ,(2010)
G. King, Ensuring the data-rich future of the social sciences. Science. ,vol. 331, pp. 719- 721 ,(2011) , 10.1126/SCIENCE.1197872
Yan Yang, Jette Egelund Holgaard, The important role of civil society groups in eco‐innovation: a triple helix perspective Journal of Knowledge-based Innovation in China. ,vol. 4, pp. 132- 148 ,(2012) , 10.1108/17561411211235730
Han Woo Park, Loet Leydesdorff, Decomposing social and semantic networks in emerging “big data” research Journal of Informetrics. ,vol. 7, pp. 756- 765 ,(2013) , 10.1016/J.JOI.2013.05.004