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Applying BPANN and hierarchical ontology to develop a methodology for binary knowledge document classification and content analysis

机译:应用BPANN和层次本体来开发二进制知识文档分类和内容分析的方法

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Nowadays many companies rely on patent engineers to search patent documents and offer recommendation and advice to Ru00026;D engineers. Given the great number of patent documents, new means to effectively and efficiently identify and manage the technology-specific patent documents are required. This research applies back-propagation artificial neural network (BPANN), a hierarchical ontology, and Normalized term frequency (NTF) method for binary document classification and content analysis. This approach helps to minimize inappropriate patent document classification. Hence, the approach reduces the effort to search and select patents for analysis. Finally, this paper use the design of exposure machines as a case study to illustrate and verify the efficacy of the approach proposed in this paper.
机译:如今,许多公司都依靠专利工程师来搜索专利文档,并向Ru00026; D工程师提供建议和建议。鉴于专利文件的数量众多,需要有效,高效地识别和管理特定于技术的专利文件的新手段。本研究将反向传播人工神经网络(BPANN),分层本体和归一化词频(NTF)方法用于二进制文档分类和内容分析。这种方法有助于最小化不适当的专利文件分类。因此,该方法减少了搜索和选择专利进行分析的工作量。最后,本文以曝光机的设计为例,说明并验证了本文提出的方法的有效性。

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