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A framework for authorship identification of Online messages: Writing-style features and classification techniques

机译:在线消息作者身份识别的框架:写作风格的功能和分类技术

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With the rapid proliferation of Internet technologies and applications, misuse of online messages for inappropriate or illegal purposes has become a major concern for society. The anonymous nature of online-message distribution makes identity tracing a critical problem. We developed a framework for authorship identification of online messages to address the identity-tracing problem. In this framework, four types of writing-style features (lexical, syntactic, structural, and content-specific features) are extracted and inductive learning algorithms are used to build feature-based classification models to identify authorship of online messages. To examine this framework, we conducted experiments on English and Chinese online-newsgroup messages. We compared the discriminating power of the four types of features and of three classification techniques: decision trees, back-propagation neural networks, and support vector machines. The experimental results showed that the proposed approach was able to identify authors of online messages with satisfactory accuracy of 70 to 95%. All four types of message features contributed to discriminating authors of online messages. Support vector machines outperformed the other two classification techniques in our experiments. The high performance we achieved for both the English and Chinese datasets showed the potential of this approach in a multiple-language context.
机译:随着Internet技术和应用的迅速普及,滥用在线消息用于不适当或非法目的已成为社会关注的主要问题。在线消息分发的匿名性质使身份跟踪成为一个关键问题。我们开发了一个在线消息的作者身份识别框架,以解决身份跟踪问题。在此框架中,提取了四种类型的写作风格特征(词汇,句法,结构和特定于内容的特征),归纳学习算法用于构建基于特征的分类模型,以识别在线消息的作者身份。为了检查该框架,我们对英语和中文在线新闻组消息进行了实验。我们比较了四种类型的特征和三种分类技术的判别能力:决策树,反向传播神经网络和支持向量机。实验结果表明,提出的方法能够以70%到95%的令人满意的准确性识别在线消息的作者。消息的所有四种类型有助于区分在线消息的作者。在我们的实验中,支持向量机的性能优于其他两种分类技术。我们在英语和中文数据集上都取得了很高的性能,这表明了这种方法在多语言环境中的潜力。

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