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A simple semantic kernel approach for SVM using higher-order paths

机译:使用高阶路径的SVM的简单语义内核方法

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The bag of words (BOW) representation of documents is very common in text classification systems. However, the BOW approach ignores the position of the words in the document and more importantly, the semantic relations between the words. In this study, we present a simple semantic kernel for Support Vector Machines (SVM) algorithm. This kernel uses higher-order relations between terms in order to incorporate semantic information into the SVM. This is an easy to implement algorithm which forms a basis for future improvements. We perform a serious of experiments on different well known textual datasets. Experiment results show that classification performance improves over the traditional kernels used in SVM such as linear kernel which is commonly used in text classification.
机译:文档的单词袋(BOW)表示法在文本分类系统中非常普遍。但是,BOW方法忽略了单词在文档中的位置,更重要的是,忽略了单词之间的语义关系。在这项研究中,我们为支持向量机(SVM)算法提供了一个简单的语义内核。该内核使用术语之间的高阶关系,以便将语义信息合并到SVM中。这是一种易于实现的算法,为将来的改进奠定了基础。我们对不同的知名文本数据集进行了认真的实验。实验结果表明,分类性能优于传统支持向量机中使用的传统核,如文本分类中常用的线性核。

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