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Semi-Supervised Semantic Role Labeling: Approaching from an Unsupervised Perspective

机译:半监督语义角色标签:从无监督的角度出发

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Reducing the reliance of semantic role labeling (SRL) methods on human-annotated data has become an active area of research. However, the prior work has largely focused on either (1) looking into ways to improve supervised SRL systems by producing surrogate annotated data and reducing sparsity of lexical features or (2) considering completely unsupervised semantic role induction settings. In this work, we aim to link these two veins of research by studying how unsupervised techniques can be improved by exploiting small amounts of labeled data. We extend a state-of-the-art Bayesian model for unsupervised semantic role induction to better accommodate for annotated sentences. Our semi-supervised method outperforms a strong supervised baseline when only a small amount of labeled data is available.
机译:减少语义角色标记(SRL)方法对人类注释数据的依赖已成为研究的活跃领域。但是,先前的工作主要集中在(1)通过生成替代注释的数据并减少词汇特征的稀疏性来研究改进监督的SRL系统的方法,或者(2)考虑完全不受监督的语义角色归纳设置。在这项工作中,我们旨在通过研究如何通过利用少量标记数据来改进无监督技术来将这两个研究脉络联系起来。我们扩展了用于无监督语义角色归纳的最新贝叶斯模型,以更好地适应带注释的句子。当只有少量标记数据可用时,我们的半监督方法优于强监督基线。

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