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Firms' knowledge profiles: Mapping patent data with unsupervised learning

机译:公司的知识概况:在无监督学习的情况下映射专利数据

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Patent data has been an obvious choice for analysis leading to strategic technology intelligence, yet, the recent proliferation of machine learning text analysis methods is changing the status of traditional patent data analysis methods and approaches. This article discusses the benefits and constraints of machine learning approaches in industry level patent analysis, and to this end offers a demonstration of unsupervised learning based analysis of the leading telecommunication firms between 2001 and 2014 based on about 160,000 USPTO full-text patents. Data were classified using full-text descriptions with Latent Dirichlet Allocation, and latent patterns emerging through the unsupervised learning process were modelled by company and year to create an overall view of patenting within the industry, and to forecast future trends. Our results demonstrate company-specific differences in their knowledge profiles, as well as show the evolution of the knowledge profiles of industry leaders from hardware to software focussed technology strategies. The results cast also light on the dynamics of emerging and declining knowledge areas in the telecommunication industry. Our results prompt a consideration of the current status of established approaches to patent landscaping, such as key-word or technology classifications and other approaches relying on semantic labelling, in the context of novel machine learning approaches. Finally, we discuss implications for policy makers, and, in particular, for strategic management in firms. (C) 2016 The Authors. Published by Elsevier Inc. This is an open access article under the CC BY license.
机译:专利数据一直是导致战略技术智能化的分析方法的明显选择,但是,机器学习文本分析方法的最新发展正在改变传统专利数据分析方法和方法的地位。本文讨论了机器学习方法在行业级专利分析中的优势和局限性,并为此目的演示了基于无监督学习的2001至2014年间领先的电信公司的分析,该分析基于约160,000种USPTO全文专利。数据使用带有潜在Dirichlet分配的全文描述进行分类,并且按公司和年份对通过无监督学习过程出现的潜在模式进行建模,以创建行业内专利的整体视图并预测未来趋势。我们的结果证明了特定公司在他们的知识概况方面的差异,并且表明了行业领导者的知识概况从硬件到注重软件的技术策略的演变。研究结果还揭示了电信行业知识领域的兴起和衰落。我们的结果促使人们在新颖的机器学习方法的背景下考虑专利环境美化的已建立方法的当前状态,例如关键字或技术分类以及其他依赖语义标记的方法。最后,我们讨论了对决策者的影响,尤其是对公司战略管理的影响。 (C)2016作者。由Elsevier Inc.发行。这是CC BY许可下的开放访问文章。

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