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Integrating Deep Linguistic Features in Factuality Prediction over Unified Datasets

机译:在统一数据集的事实性预测中集成深度语言功能

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Previous models for the assessment of commitment towards a predicate in a sentence (also known as factuality prediction) were trained and tested against a specific annotated dataset, subsequently limiting the generality of their results. In this work we propose an intuitive method for mapping three previously annotated corpora onto a single factuality scale, thereby enabling models to be tested across these corpora. In addition, we design a novel model for factuality prediction by first extending a previous rule-based factuality prediction system and applying it over an abstraction of dependency trees, and then using the output of this system in a supervised classifier. We show that this model outperforms previous methods on all three datasets. We make both the unified factuality corpus and our new model publicly available.
机译:先前针对句子中谓词承诺的评估模型(也称为事实预测)已针对特定的带注释数据集进行了训练和测试,随后限制了其结果的通用性。在这项工作中,我们提出了一种直观的方法,用于将三个先前带注释的语料库映射到单个事实量表上,从而使模型可以在这些语料库中进行测试。此外,我们通过首先扩展以前的基于规则的事实预测系统并将其应用于依赖树的抽象上,然后在监督分类器中使用该系统的输出,来设计一种用于事实预测的新颖模型。我们表明,该模型在所有三个数据集上均优于先前的方法。我们同时公开统一事实性语料库和新模型。

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