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Team Fernando-Pessa at SemEval-2019 Task 4: Back to Basics in Hyperpartisan News Detection

机译:Fernando-Pessa团队在SemEval-2019上的任务4:回到超党派新闻检测的基础

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This paper describes our submission~1 to the SemEval 2019 Hyperpartisan News Detection task. Our system aims for a linguistics-based document classification from a minimal set of interpretable features, while maintaining good performance. To this goal, we follow a feature-based approach and perform several experiments with different machine learning classifiers. On the main task, our model achieved an accuracy of 71.7%, which was improved after the task's end to 72.9%. We also participate in the meta-learning sub-task, for classifying documents with the binary classifications of all submitted systems as input, achieving an accuracy of 89.9%.
机译:本文介绍了我们对SemEval 2019 Hyperpartisan News Detection任务的提交〜1。我们的系统旨在从最少的可解释功能集中进行基于语言学的文档分类,同时保持良好的性能。为了达到这个目标,我们遵循基于特征的方法,并使用不同的机器学习分类器进行了几次实验。在主要任务上,我们的模型达到了71.7%的准确度,在任务结束后提高到72.9%。我们还参加了元学习子任务,该任务使用所有提交系统的二进制分类作为输入对文档进行分类,从而达到89.9%的准确性。

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