Developing a framework to track knowledge convergence in 'big data' Online publication date: Wed, 07-Nov-2018
by Santiago Ruiz-Navas; Kumiko Miyazaki
International Journal of Technology Intelligence and Planning (IJTIP), Vol. 12, No. 2, 2018
Abstract: Systems to track the early stages of industrial convergence are used to understand technological and scientific developments. Keywords are considered an important indicator to detect knowledge convergence and so far, few reported methods use them. We define two objectives, first to propose a framework to detect knowledge convergence using keywords and second to test this framework by detecting analysing topics converging into 'big data'. We propose a method which uses scientific papers' author keywords as the data source and includes techniques such as word co-occurrence network analysis and established knowledge sources to disambiguate and classify keywords. We analysed scientific publications related to 'big data' for the years 2008-2016 and identified 221 keywords as a proxy of knowledge convergence and grouped them into 11 topics. Among these 11 topics, four were identified as significant adopters of big data knowledge: artificial intelligence, pattern recognition, natural language processing and data science.
Online publication date: Wed, 07-Nov-2018
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