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An Automatic Classification Method for Patents

机译:一种专利分类方法

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摘要

As an important preprocessing technology in patent knowledge utilization, patent classification should be accurate and efficient Commonly used feature selection methods and classification algorithms, like information gain (IG) and k nearest neighbors (k-NN) algorithm, are superior in text classification but have some drawbacks in patent classification. In the paper, we focus on patent classification which is rarely cared about by researchers. We present a new systematic classification method called improved IG & k-NN based patent classification (TTKPC) consisted of a new feature selection method based on IG and a new classification algorithm based on k-NN algorithm for automatic patent classification. We ran the experiment on experimental patent dataset and compared the proposed method with other methods usually among the best performing methods for text classification. As the results indicate, we find the proposed method is better than others.
机译:作为专利知识利用率的重要预处理技术,专利分类应准确,有效的常用特征选择方法和分类算法,如信息增益(IG)和k最近邻居(K-NN)算法,在文本分类中优越,但具有专利分类中的一些缺点。在论文中,我们专注于专利分类,这些分类很少被研究人员关心。我们提出了一种新的系统分类方法,称为改进的IG和​​K-NN专利分类(TTKPC)包括基于IG的新特征选择方法和基于K-NN算法的自动专利分类的新分类算法。我们在实验专利数据集上运行了实验,并将提出的方法与其他方法进行了比较,通常是文本分类的最佳表现方法。结果表明,我们发现所提出的方法比其他方法更好。

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