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A Profile-Based Method for Authorship Verification

机译:基于个人资料验证的方法

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Authorship verification is one of the most challenging tasks in style-based text categorization. Given a set of documents, all by the same author, and another document of unknown authorship the question is whether or not the latter is also by that author. Recently, in the framework of the PAN-2013 evaluation lab, a competition in authorship verification was organized and the vast majority of submitted approaches, including the best performing models, followed the instance-based paradigm where each text sample by one author is treated separately. In this paper, we show that the profile-based paradigm (where all samples by one author are treated cumulatively) can be very effective surpassing the performance of PAN-2013 winners without using any information from external sources. The proposed approach is fully-trainable and we demonstrate an appropriate tuning of parameter settings for PAN-2013 corpora achieving accurate answers especially when the cost of false negatives is high.
机译:作者验证是基于风格的文本分类中最具挑战性的任务之一。给定一套文件,所有的文件,以及一个未知作者的另一个文件问题是后者是否也是由该作者的。最近,在Pan-2013评估实验室的框架中,组织了作者核查的竞争,并且绝大多数提交的方法包括最佳的表现模式,遵循基于实例的范例,其中一个作者的每个文本样本被单独处理。在本文中,我们表明基于个人资料的范例(其中一个作者的所有样本累积地处理)可以非常有效地超越Pan-2013获胜者的性能而不使用外部来源的任何信息。所提出的方法是完全培训的,我们展示了适当调整Pan-2013 Corpora参数设置,以实现准确的答案,特别是当假底片的成本很高时。

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