基于交叉连接GRU核映射支持向量机的短文本分类

Qi Wang, Zhaoying Liu, Ting Zhang, Yujian Li
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引用次数: 1

摘要

支持向量机(SVM)在短文本分类中取得了优异的成绩。然而,它的性能在核函数中受到限制。为了进一步提高短文本分类的准确率,本文提出了一种基于交叉连接GRU核映射支持向量机(C-GRUKMSVM)的短文本分类方法。该方法由特征映射模块和分类模块组成。特征映射模块首先使用手套法将文本表示为词向量,然后使用三层交联GRU将低维词向量显式映射到高维空间;分类模块采用软边距支持向量机进行分类。在5个公开的短文本数据集上的实验结果表明,C-GRUKMSVM比卷积网络、支持向量机和Naïve贝叶斯具有更好的文本分类性能。此外,不同的交联方式、循环单元和循环结构对C-GRUKMSVM的性能也有影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short Text Classification Based on Cross-Connected GRU Kernel Mapping Support Vector Machine
Support vector machine (SVM) has achieved excellent results in short text classification. However, its performance is limited in the kernel function. This paper presents a short text classification method based on Cross-connected GRU Kernel Mapping Support Vector Machine (C-GRUKMSVM), to further improve the accuracy of short text classification. The method consists of a feature mapping module and a classification module. The feature mapping module first represents the text as a word vector using the glove method, and then explicitly maps the low-dimensional word vector to a high-dimensional space using a three-layer cross-connected GRU; the classification module uses a soft-margin support vector machine for classification. Experimental results on five publicly available short text datasets show that C-GRUKMSVM achieves better text classification performance than convolutional networks, support vector machines and Naïve Bayes. Additionally, different cross-connected methods, recurrent units and recurrent structures have an impact on the performance of C-GRUKMSVM.
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