基于机器学习的网络安全技术趋同趋势与预测研究

Sungwook Ryu Sungwook Ryu, Jinsu Kim Sungwook Ryu, Namje Park Jinsu Kim
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引用次数: 0

摘要

技术不分青红皂白的趋同使预测变得困难,并可能给技术投资带来许多困难。这使得资本投资难以选择,并可能导致对低效率技术的过度投资。因此,分析融合技术的发展趋势,预测未来具有较大影响力的融合领域,可以诱导有效投资,引导具有较大影响力的技术实现技术大发展。本文的目的是通过对主要融合领域的预测,分析未来预计具有较高影响力的技术,并提出可以作为投资指标的融合领域。该机制选择了安全领域的四家知名期刊,并收集元数据,通过专利元数据收集生成技术卓越性数据集和商业化数据集。然后,通过应用潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)从元数据集中根据主题提取主关键字。提取的主题和关键词与其他年份的主题和关键词无关。为此,采用动态主题模型(DTM)对抽取的主题进行趋势分析和预测。DTM对LDA分类的融合区域内的主题进行分析,并对每个主题关键词进行逐年链接的主题变化趋势分析。最后,对融合区域的关联进行了分析,得到了一个影响较大的融合区域。通过在网络安全融合领域提供高影响区域,这些结果被认为可以作为有效技术投资的指标。
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Study on Trends and Predictions of Convergence in Cybersecurity Technology Using Machine Learning
The indiscriminate convergence of technologies makes prediction difficult and can cause many difficulties in technology investment. This makes it difficult to choose capital investment and can induce excessive investment in inefficient technologies. Therefore, analyzing the trend of convergence technology and predicting a highly influential convergence area in the future can induce effective investment, and lead the highly influential technology to achieve great technological development. The purpose of this paper is to analyze technologies that are expected to have high influence in the future through prediction of major fusion areas and to present fusion areas that can be used as indicators of investment. The proposed mechanism selected four prominent journals in the security area and collected metadata to generate a dataset in terms of technological excellence and a dataset in terms of commercialization through patent metadata collection. Thereafter, a process of extracting a main keyword according to a topic from a metadata set by applying a Latent Dirichlet Allocation (LDA) is performed. The extracted topics and keywords are not related to topics and keywords of other years. Therefore, a dynamic topic model (DTM) is applied to analyze the trend of the extracted topics and perform prediction. DTM analyzes the topics in the fusion area classified by LDA and the trend of changing topics linked by year for each topic keyword. Finally, the association of the fusion region is analyzed to derive a fusion region with high influence. These results are believed to be used as an indicator of effective technology investment by providing a high impact area in the convergence area of cybersecurity.  
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