论文标题

使用深度学习和弱信号分析检测新兴技术及其进化

Detecting Emerging Technologies and their Evolution using Deep Learning and Weak Signal Analysis

论文作者

Ebadi, Ashkan, Auger, Alain, Gauthier, Yvan

论文摘要

新兴技术可以产生重大的经济影响并影响战略稳定。然而,对新兴技术的早期识别仍然具有挑战性。为了及时可靠地识别新兴技术,需要对相关科学和技术(S&T)趋势及其相关参考进行全面检查。该检查通常由领域专家进行,需要大量的时间和精力来获得见解。使用领域专家从S&T趋势中识别新兴技术可能会限制分析大量信息并在评估中引入主观性的能力。需要决策支持系统,以通过对环境的持续和持续监控来提供准确和可靠的基于证据的指标,并有助于确定可能改变安全和经济繁荣的新兴技术信号。例如,高人物研究领域最近见证了几项具有深远技术,商业和国家安全影响的进步。在这项工作中,我们提出了一种多层定量方法,能够通过利用深度学习和弱信号分析来从科学出版物中识别出未来的迹象。拟议的框架可以帮助战略规划师和领域专家更好地识别和监视新兴技术趋势。

Emerging technologies can have major economic impacts and affect strategic stability. Yet, early identification of emerging technologies remains challenging. In order to identify emerging technologies in a timely and reliable manner, a comprehensive examination of relevant scientific and technological (S&T) trends and their related references is required. This examination is generally done by domain experts and requires significant amounts of time and effort to gain insights. The use of domain experts to identify emerging technologies from S&T trends may limit the capacity to analyse large volumes of information and introduce subjectivity in the assessments. Decision support systems are required to provide accurate and reliable evidence-based indicators through constant and continuous monitoring of the environment and help identify signals of emerging technologies that could alter security and economic prosperity. For example, the research field of hypersonics has recently witnessed several advancements having profound technological, commercial, and national security implications. In this work, we present a multi-layer quantitative approach able to identify future signs from scientific publications on hypersonics by leveraging deep learning and weak signal analysis. The proposed framework can help strategic planners and domain experts better identify and monitor emerging technology trends.

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