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Contradiction Detection with Contradiction-Specific Word Embedding

机译:带有矛盾特定词嵌入的矛盾检测

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Contradiction detection is a task to recognize contradiction relations between a pair of sentences. Despite the effectiveness of traditional context-based word embedding learning algorithms in many natural language processing tasks, such algorithms are not powerful enough for contradiction detection. Contrasting words such as “overfull” and “empty” are mostly mapped into close vectors in such embedding space. To solve this problem, we develop a tailored neural network to learn contradiction-specific word embedding (CWE). The method can separate antonyms in the opposite ends of a spectrum. CWE is learned from a training corpus which is automatically generated from the paraphrase database, and is naturally applied as features to carry out contradiction detection in SemEval 2014 benchmark dataset. Experimental results show that CWE outperforms traditional context-based word embedding in contradiction detection. The proposed model for contradiction detection performs comparably with the top-performing system in accuracy of three-category classification and enhances the accuracy from 75.97% to 82.08% in the contradiction category.
机译:矛盾检测是识别一对句子之间的矛盾关系的任务。尽管传统的基于上下文的词嵌入学习算法在许多自然语言处理任务中是有效的,但这种算法的功能不足以检测矛盾。诸如“ overfull”和“ empty”之类的对比词大多被映射到这种嵌入空间中的接近向量中。为了解决这个问题,我们开发了一个量身定制的神经网络来学习特定于矛盾的词嵌入(CWE)。该方法可以在频谱的相对两端分离反义词。 CWE是从训练语料库中学习的,该训练语料表是从释义数据库自动生成的,自然可以用作在SemEval 2014基准数据集中进行矛盾检测的功能。实验结果表明,在矛盾检测中,CWE优于传统的基于上下文的词嵌入。所提出的矛盾检测模型在三类分类的准确性上与性能最高的系统相当,并将矛盾类别的准确性从75.97%提高到82.08%。

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