Facilitating the discovery of relevant studies on risk analysis for three-dimensional printing based on an integrated framework
Munan Li () and
Alan L. Porter ()
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Munan Li: South China University of Technology
Alan L. Porter: Georgia Institute of Technology
Scientometrics, 2018, vol. 114, issue 1, No 12, 277-300
Abstract:
Abstract In an accurate and timely manner, capturing the risk signals for a specific emerging technology from academic publications is important to facilitate risk governance and to reduce the potential negative impact on socioeconomic systems. In the past decade, three-dimensional printing (3D printing) has become a promising emerging technology. To identify the relevant research on risk analysis for 3D printing, “term clumping” on “risk analysis” is explored using a quantitative method, and an integrated framework for risk identification is proposed with regard to 3D printing. This method involves a variation of TF*IDF and several new metrics for a Boolean query of the literature. The empirical results for the risk analysis studies of 3D printing show that, to date, very little attention has been paid to the relevant topics. However, although the risk signals of 3D printing are still weak and dispersed in many different categories, the potential threats to human health, cyber-security, and the environment are revealed in some facets. This enables initiation of strategies for anticipatory governance, involving science and technology policies and regulations.
Keywords: Emerging technology; Risk analysis; 3D printing; TF*IDF (search for similar items in EconPapers)
Date: 2018
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Citations: View citations in EconPapers (5)
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DOI: 10.1007/s11192-017-2570-0
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