通过作者身份分类的文档来源和认证

Muhammad Tayyab Zamir, Muhammad Asif Ayub, Jebran Khan, Muhammad Jawad Ikram, Nasir Ahmad, Kashif Ahmad
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引用次数: 0

摘要

风格分析是一个相对较少探索的主题,它支持几个有趣的应用程序。例如,它允许作者调整他们的写作风格,以在协作中产生更连贯的文档。类似地,样式分析也可以作为主要步骤用于文档来源和身份验证。在本文中,我们提出了一个基于集成的文本处理框架,用于分类单作者和多作者的文档,这是风格分析的关键任务之一。所提出的框架结合了几种最先进的文本分类算法,包括经典的机器学习(ML)算法、变形器和深度学习算法,这些算法都是单独的,也都是基于优点的后期融合。对于基于优点的后期融合,我们采用了几种权重优化和选择方法来为各个文本分类算法分配基于优点的权重。我们还通过对干净和非干净数据进行实验,分析了在预处理过程中通常在NLP应用程序中排除的字符对任务的影响。该框架在大规模基准数据集上进行了评估,显著提高了现有解决方案的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Document Provenance and Authentication through Authorship Classification
Style analysis, which is relatively a less explored topic, enables several interesting applications. For instance, it allows authors to adjust their writing style to produce a more coherent document in collaboration. Similarly, style analysis can also be used for document provenance and authentication as a primary step. In this paper, we propose an ensemble-based text-processing framework for the classification of single and multi-authored documents, which is one of the key tasks in style analysis. The proposed framework incorporates several state-of-the-art text classification algorithms including classical Machine Learning (ML) algorithms, transformers, and deep learning algorithms both individually and in merit-based late fusion. For the merit-based late fusion, we employed several weight optimization and selection methods to assign merit-based weights to the individual text classification algorithms. We also analyze the impact of the characters on the task that are usually excluded in NLP applications during pre-processing by conducting experiments on both clean and un-clean data. The proposed framework is evaluated on a large-scale benchmark dataset, significantly improving performance over the existing solutions.
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