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A methodology for technology trend monitoring: the case of semantic technologies

Oleg Ena (), Nadezhda Mikova (), Ozcan Saritas () and Anna Sokolova ()
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Oleg Ena: National Research University Higher School of Economics
Nadezhda Mikova: National Research University Higher School of Economics
Ozcan Saritas: National Research University Higher School of Economics

Scientometrics, 2016, vol. 108, issue 3, No 1, 1013-1041

Abstract: Abstract This paper introduces a systematic technology trend monitoring (TTM) methodology based on an analysis of bibliometric data. Among the key premises for developing a methodology are: (1) the increasing number of data sources addressing different phases of the STI development, and thus requiring a more holistic and integrated analysis; (2) the need for more customized clustering approaches particularly for the purpose of identifying trends; and (3) augmenting the policy impact of trends through gathering future-oriented intelligence on emerging developments and potential disruptive changes. Thus, the TTM methodology developed combines and jointly analyzes different datasets to gain intelligence to cover different phases of the technological evolution starting from the ‘emergence’ of a technology towards ‘supporting’ and ‘solution’ applications and more ‘practical’ business and market-oriented uses. Furthermore, the study presents a new algorithm for data clustering in order to overcome the weaknesses of readily available clusterization tools for the purpose of identifying technology trends. The present study places the TTM activities into a wider policy context to make use of the outcomes for the purpose of Science, Technology and Innovation policy formulation, and R&D strategy making processes. The methodology developed is demonstrated in the domain of “semantic technologies”.

Keywords: Trend monitoring; Bibliometrics; Technology mining; Foresight; Semantic technologies; Russia (search for similar items in EconPapers)
Date: 2016
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Citations: View citations in EconPapers (13)

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DOI: 10.1007/s11192-016-2024-0

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