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A deep learning methodology for automatic extraction and discovery of technical intelligence

机译:自动提取和发现技术智能的深度学习方法

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摘要

It is imperative and arduous to acquire product and business intelligence of global technical market. In this paper, a deep learning methodology is proposed to automatically extract and discover vital technical information from large-scale news dataset. More specifically, six kinds of technical elements are first defined to provide the concrete syntax information. Next, the CRF-BiLSTM approach is used to automatically extract technical entities, in which a conditional random field (CRF) layer is added on top of bidirectional long short-term memory (BiLSTM) layer. Then, three indicators including timeliness, influence and innovativeness are designed to evaluate the value of intelligence comprehensively. Finally, as a case study, technical news on three military-related websites is utilized to illustrate the efficiency and effectiveness of the foregoing methodology with the result of 80.82 (F-score) in comparison to four other models. In more detail, data on unmanned systems are extracted to summarize the state-of-the-art, and track up-to-the-minute innovations and developments in this field.
机译:获取全球技术市场的产品和商业智能势在必行且艰巨。本文提出了一种深度学习方法,可从大型新闻数据集中自动提取和发现重要的技术信息。更具体地说,首先定义了六种技术元素以提供具体的语法信息。接下来,使用CRF-BiLSTM方法自动提取技术实体,其中在双向长短期内存(BiLSTM)层之上添加了条件随机字段(CRF)层。然后,设计了及时性,影响力和创新性三个指标来全面评估智能的价值。最后,作为案例研究,利用三个军事相关网站上的技术新闻来说明上述方法的效率和有效性,与其他四个模型相比,结果为80.82(F评分)。更详细地,提取有关无人系统的数据以总结最新技术,并跟踪该领域的最新创新和发展。

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