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Technology Forecasting using Topic-Based Patent Analysis

机译:使用基于主题的专利分析进行技术预测

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摘要

The number of patents with critical information related to various technologies is increasing by the day. This trend has led corporations and countries to consider patent analysis as an important element in their analysis methodology for research and development. The present study seeks to determine and forecast vacant technology with considerable development potential through an analysis of patents. In order to identify a vacant technology cluster, the unstructured patent documents need to be structured into groups of similar technologies by using k-means clustering. Furthermore, silhouette width, Davies-Bouldin Index (DBI), and Pseudo F are used for enhancing reliability of determining the optimal number of clusters. From each technology cluster, a generative topic model, latent Dirichlet allocation (LDA), is adopted to extract latent topics specifically for examination of technologies. Renewable energy patents from the United States Patent and Trademark Office (USPTO) are analyzed for the case study, which verifies the proposed methodology.
机译:与各种技术相关的具有关键信息的专利数量每天都在增加。这种趋势已导致公司和国家将专利分析视为其研发分析方法中的重要元素。本研究旨在通过对专利的分析来确定和预测具有巨大发展潜力的空缺技术。为了确定一个空缺的技术集群,需要通过使用k均值聚类将非结构化专利文档结构化为类似技术的组。此外,轮廓宽度,Davies-Bouldin索引(DBI)和Pseudo F用于增强确定最佳群集数的可靠性。从每个技术集群中,采用生成主题模型,即潜在的狄利克雷分配(LDA),以提取专门用于技术检查的潜在主题。分析了美国专利商标局(USPTO)的可再生能源专利,以进行案例研究,从而验证了所建议的方法。

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