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Ontology-based neural network for patent knowledge management in design collaboration

机译:基于本体的神经网络,用于设计协作中的专利知识管理

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摘要

In order to stimulate innovation during the collaborative process of new product and production development, especially to avoid duplicating existing techniques or infringing upon others' patents and intellectual property rights, the collaborative team of research and development, and patent engineers must accurately identify relevant patent knowledge in a timely manner. This research develops a novel knowledge management approach using ontology-based artificial neural network (ANN) algorithm to automatically classify and search knowledge documents stored in huge online patent corpuses. This research focuses on developing a smart and semantic oriented classification and search from the sources of the most critical and well-structured knowledge publications, i.e. patents, to gain valuable and practical references for the collaborative networks of technology-centric product and production development teams. The research uses the domain ontology schema created using Protege and derives the semantic concept probabilities of key phrases that frequently occur in domain relevant patent documents. Then, by combining the term frequencies and the concept probabilities of key phrases as the ANN inputs, the method shows significant improvement in classification accuracy. In addition, this research provides an advanced semantic-oriented search algorithm to accurately identify related patent documents in the patent knowledge base. The case demonstration analyses 343 chemical mechanical polishing and 150 radio-frequency identification patents sample sets to verify and measure the performance of the proposed approach. The results are compared with the previous automatic classification methods demonstrating much improved outcomes.
机译:为了在新产品和生产开发的协作过程中激发创新,特别是避免重复使用现有技术或侵犯他人的专利和知识产权,研发团队和专利工程师的协作团队必须准确地识别相关的专利知识。及时。这项研究开发了一种新颖的知识管理方法,它使用基于本体的人工神经网络(ANN)算法来自动分类和搜索存储在庞大的在线专利语料库中的知识文档。这项研究的重点是从最关键和结构最完善的知识出版物(即专利)的来源中开发面向智能和语义的分类和搜索,以获取以技术为中心的产品和生产开发团队的协作网络的宝贵实用参考。该研究使用了由Protege创建的领域本体模式,并得出了与领域相关的专利文档中经常出现的关键短语的语义概念概率。然后,通过组合术语频率和作为ANN输入的关键短语的概念概率,该方法显示出分类准确度的显着提高。另外,本研究提供了一种先进的面向语义的搜索算法,可以准确地识别专利知识库中的相关专利文献。案例演示分析了343种化学机械抛光和150种射频识别专利样本集,以验证和衡量该方法的性能。将结果与以前的自动分类方法进行比较,证明结果得到了大大改善。

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