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基于RBFNN的专利自动分类研究 被引量:4

Research of Patent Automatic Classification Based on RBFNN
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摘要 为减少人工分类的不确定性和分类错误,将文本分类技术引入专利自动分类系统,采用径向基函数神经网络(RBFNN)算法完成专利文本的训练和分类,并进行相关测试分析。实验结果表明,采用RBFNN分类器在专利文本自动分类中具有较理想的性能,测试平均F1值在70%以上。 In order to reduce the poor consistency and the errors in manual patent classification, this article introduces text classification technology into patent auto -classification system. It uses the radial basis function neural network algo- rithm to realize the automatic classification of patent text, and analyses the test samples. The experiment results show that this new system has a better classification results, and the average F1 value is higher than 70%
作者 马芳
出处 《现代图书情报技术》 CSSCI 北大核心 2011年第12期58-63,共6页 New Technology of Library and Information Service
关键词 专利自动分类 文本分类 径向基函数神经网络 Patent automatic classification Text categorization Radial basis function neural network
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参考文献11

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二级参考文献30

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