Assessing Arabic Weblog Credibility via Deep Co-learning

Chadi Helwe, Shady Elbassuoni, A. Zaatari, W. El-Hajj
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引用次数: 12

Abstract

Assessing the credibility of online content has garnered a lot of attention lately. We focus on one such type of online content, namely weblogs or blogs for short. Some recent work attempted the task of automatically assessing the credibility of blogs, typically via machine learning. However, in the case of Arabic blogs, there are hardly any datasets available that can be used to train robust machine learning models for this difficult task. To overcome the lack of sufficient training data, we propose deep co-learning, a semi-supervised end-to-end deep learning approach to assess the credibility of Arabic blogs. In deep co-learning, multiple weak deep neural network classifiers are trained using a small labeled dataset, and each using a different view of the data. Each one of these classifiers is then used to classify unlabeled data, and its prediction is used to train the other classifiers in a semi-supervised fashion. We evaluate our deep co-learning approach on an Arabic blogs dataset, and we report significant improvements in performance compared to many baselines including fully-supervised deep learning models as well as ensemble models.
通过深度共同学习评估阿拉伯博客的可信度
评估网络内容的可信度最近引起了很多关注。我们专注于一种这样的在线内容,即网络日志或博客的简称。最近的一些工作试图通过机器学习来自动评估博客的可信度。然而,在阿拉伯语博客的情况下,几乎没有任何可用的数据集可以用来训练强大的机器学习模型来完成这项艰巨的任务。为了克服缺乏足够的训练数据,我们提出了深度共同学习,一种半监督的端到端深度学习方法来评估阿拉伯语博客的可信度。在深度共同学习中,使用一个小的标记数据集训练多个弱深度神经网络分类器,每个分类器使用不同的数据视图。然后使用这些分类器中的每个分类器对未标记的数据进行分类,并使用其预测以半监督的方式训练其他分类器。我们在一个阿拉伯博客数据集上评估了我们的深度共同学习方法,并报告了与许多基线(包括完全监督的深度学习模型和集成模型)相比,性能有了显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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