构建基于图形的专利搜索引擎

Sebastian Björkqvist, Juho Kallio
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引用次数: 0

摘要

执行现有技术检索是专利起草和无效的重要步骤。由于大量现有的专利文献和分析这些文献所需的领域知识,这项任务具有挑战性。我们提出了一个基于图形的专利搜索引擎,它试图模仿专业专利审查员所做的工作。每个专利文件都被转换成描述发明各部分和各部分之间关系的图表。该搜索引擎由一个图形神经网络提供动力,该网络通过使用专利局检索报告中的新颖性引用数据来学习查找现有技术,其中引用由人类专利审查员编制。我们展示了基于图的方法是对技术文档进行检索的有效方法,并在专利检索的上下文中进行了演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building a Graph-Based Patent Search Engine
Performing prior art searches is an essential step in both patent drafting and invalidation. The task is challenging due to the large number of existing patent documents and the domain knowledge required to analyze the documents. We present a graph-based patent search engine that tries to mimic the work done by a professional patent examiner. Each patent document is converted to a graph that describes the parts of the invention and the relations between the parts. The search engine is powered by a graph neural network that learns to find prior art by using novelty citation data from patent office search reports where citations are compiled by human patent examiners. We show that a graph-based approach is an efficient way to perform searches on technical documents and demonstrate it in the context of patent searching.
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