The Promise of Machine Learning for Patent Landscaping

Andrew A. Toole, Nicholas A. Pairolero, James L. Forman, Alexander V. Giczy
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引用次数: 3

Abstract

Patent landscaping involves the identification of patents in a specific technology area to understand the business, economic, and policy implications of technological change. Traditionally, patent landscapes were constructed using keyword and classification queries, a labor-intensive process that produced results limited to the scope of the query. In this paper, we discuss the advantages and disadvantages of using machine learning to produce patent landscapes. Machine learning leverages traditional queries to construct the data necessary to train the machine learning models, and the models allow the resultant landscapes to extend more broadly into areas of technology not expected a priori. The models, however, are “black boxes” that limit transparency into their underlying reasoning. To illustrate these points, we summarize two landscapes we recently conducted, one in mineral mining and another in artificial intelligence.
机器学习在专利美化方面的前景
专利景观设计涉及识别特定技术领域的专利,以了解技术变革的商业、经济和政策影响。传统上,专利景观是使用关键字和分类查询构建的,这是一个劳动密集型的过程,产生的结果仅限于查询的范围。在本文中,我们讨论了使用机器学习生成专利景观的优点和缺点。机器学习利用传统查询来构建训练机器学习模型所需的数据,并且这些模型允许结果景观更广泛地扩展到非先验预期的技术领域。然而,这些模型是“黑盒子”,限制了其基本推理的透明度。为了说明这些观点,我们总结了我们最近进行的两个景观,一个是矿物开采,另一个是人工智能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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