Structural learning framework for binary short text classification

Wuying Liu, Lin Wang
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引用次数: 3

Abstract

With the fast-paced prevalence of smartphones, binary short text classification (STC) is becoming a basic and challenging issue, and relevant STC algorithms can be successfully used in spam filtering for short message service (SMS), wechat, microblogging, and so on. In this manuscript, we address the structural feature of SMS documents and propose a structural learning framework, which decomposes the complex binary STC problem according to the SMS document structure, and predicts the final category by combining several sub-predictions. Supported by our index of string-frequence, we also implement some STC domain classifiers. The experimental results show that the performance of two previous STC algorithms can be upgraded by the structural learning framework, and our STC domain classifiers can achieve the state-of-the-art performance on the task of Chinese SMS spam filtering within the structural learning framework.
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二元短文本分类的结构学习框架
随着智能手机的快速普及,二进制短文本分类(STC)成为一个基础且具有挑战性的问题,而相关的STC算法可以成功地应用于短信服务(SMS)、b微信、微博等垃圾邮件过滤中。在本文中,我们针对短信文档的结构特征,提出了一个结构化学习框架,该框架根据短信文档的结构对复杂的二进制STC问题进行分解,并结合多个子预测来预测最终的类别。在字符串频率索引的支持下,我们还实现了一些STC域分类器。实验结果表明,基于结构学习框架的两种STC算法的性能都得到了提升,我们的STC域分类器在结构学习框架下对中文短信垃圾邮件过滤的任务达到了最先进的性能。
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