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Semi-Supervised Frame-Semantic Parsing for Unknown Predicates

机译:未知谓词的半监督帧语义解析

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We describe a new approach to disambiguat-ing semantic frames evoked by lexical predicates previously unseen in a lexicon or annotated data. Our approach makes use of large amounts of unlabeled data in a graph-based semi-supervised learning framework. We construct a large graph where vertices correspond to potential predicates and use label propagation to learn possible semantic frames for new ones. The label-propagated graph is used within a frame-semantic parser and, for unknown predicates, results in over 15% absolute improvement in frame identification accuracy and over 13% absolute improvement in full frame-semantic parsing Fi score on a blind test set, over a state-of-the-art supervised baseline.
机译:我们描述了一种消除歧义的新方法,这种歧义是由以前在词典或带注释数据中看不到的词汇谓词引起的。我们的方法在基于图的半监督学习框架中利用了大量未标记的数据。我们构造了一个大图,其中顶点对应于潜在谓词,并使用标签传播来学习可能的语义框架。标签传播图在帧语义解析器中使用,对于未知谓词,在盲测试集上,帧识别准确度的绝对改善超过15%,在完整帧语义解析的Fi评分中,超过13%绝对改善,在最先进的监督基准之上。

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