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Enhancing Opinion Role Labeling with Semantic-Aware Word Representations from Semantic Role Labeling

机译:使用语义角色标签中的语义感知词表示法增强意见角色标签

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Opinion role labeling (ORL) is an important task for fine-grained opinion mining, which identifies important opinion arguments such as holder and target for a given opinion trigger. The task is highly correlative with semantic role labeling (SRL). which identifies important semantic arguments such as agent and patient for a given predicate. As predicate agents and patients usually correspond to opinion holders and targets respectively, SRL could be valuable for ORL. In this work, we propose a simple and novel method to enhance ORL by utilizing SRL, presenting semantic-aware word representations which are learned from SRL. The representations are then fed into a baseline neural ORL model as basic inputs. We verify the proposed method on a benchmark MPQA corpus. Experimental results show that the proposed method is highly effective. In addition, we compare the method with two representative methods of SRL integration as well, finding that our method can outperform the two methods significantly, achieving 1.47% higher F-scores than the better one.
机译:意见角色标签(ORL)是进行细粒度的意见挖掘的重要任务,它可以确定重要意见观点,例如给定意见触发者的持有者和目标。该任务与语义角色标记(SRL)高度相关。可以识别重要谓词,例如给定谓词的主体和患者。由于谓语代理人和患者通常分别对应于观点持有者和目标对象,因此SRL对于ORL可能很有价值。在这项工作中,我们提出了一种简单而新颖的方法,通过利用SRL来增强ORL,并提供从SRL学习的语义感知词表示。然后将表示形式作为基本输入输入到基线神经ORL模型中。我们在基准MPQA语料库上验证了该方法。实验结果表明,该方法是有效的。此外,我们还将该方法与两种具有代表性的SRL集成方法进行了比较,发现我们的方法可以明显优于两种方法,其F得分比较好的方法高1.47%。

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