首页> 外文会议>Annual conference of the North American Chapter of the Association for Computational Linguistics: human language technologies;International workshop on semantic evaluation >Neural GRANNy at SemEval-2019 Task 2: A combined approach for better modeling of semantic relationships in semantic frame induction
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Neural GRANNy at SemEval-2019 Task 2: A combined approach for better modeling of semantic relationships in semantic frame induction

机译:SemEval-2019的神经粒度任务2:一种在语义框架归纳中更好地建模语义关系的组合方法

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We describe our solutions for semantic frame and role induction subtasks of SemEval 2019 Task 2. Our approaches got the highest scores, and the solution for the frame induction problem officially took the first place. The main contributions of this paper are related to the semantic frame induction problem. We propose a combined approach that employs two different types of vector representations: dense representations from hidden layers of a masked language model, and sparse representations based on substitutes for the target word in the context. The first one better groups synonyms, the second one is better at disambiguating homonyms. Extending the context to include nearby sentences improves the results in both cases. New Hearst-like patterns for verbs are introduced that prove to be effective for frame induction. Finally, we propose an approach to selecting the number of clusters in agglomera-tive clustering.
机译:我们描述了SemEval 2019 Task 2的语义框架和角色归纳子任务的解决方案。我们的方法得分最高,并且框架归纳问题的解决方案正式获得第一名。本文的主要贡献与语义框架归纳问题有关。我们提出了一种组合方法,该方法采用两种不同类型的向量表示形式:蒙版语言模型的隐藏层中的密集表示形式,以及基于上下文中目标单词替代的稀疏表示形式。第一个更好地对同义词进行分组,第二个更好地对同义词进行歧义消除。在两种情况下,将上下文扩展为包括附近的句子都会改善结果。引入了新的类似于Hearst的动词模式,被证明对框架归纳有效。最后,我们提出了一种在聚集聚类中选择聚类数量的方法。

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