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K-SRL: Instance-based Learning for Semantic Role Labeling

机译:K-SRL:基于实例的语义角色标记学习

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Semantic role labeling (SRL) is the task of identifying and labeling predicate-argument structures in sentences with semantic frame and role labels. A known challenge in SRL is the large number of low-frequency exceptions in training data, which are highly context-specific and difficult to generalize. To overcome this challenge, we propose the use of instance-based learning that performs no explicit generalization, but rather extrapolates predictions from the most similar instances in the training data. We present a variant of k-nearest neighbors (kNN) classification with composite features to identify nearest neighbors for SRL. We show that high-quality predictions can be derived from a very small number of similar instances. In a comparative evaluation we experimentally demonstrate that our instance-based learning approach significantly outperforms current state-of-the-art systems on both in-domain and out-of-domain data, reaching F_1-scores of 89,28% and 79.91% respectively.
机译:语义角色标签(SRL)是使用语义框架和角色标签来识别和标记句子中的谓词-自变量结构的任务。 SRL中的一个已知挑战是训练数据中的大量低频异常,这些异常是高度特定于上下文的,并且难以概括。为了克服这一挑战,我们建议使用基于实例的学习,该学习不执行任何显式的概括,而是从训练数据中最相似的实例中推断出预测。我们提出了具有复合特征的k最近邻(kNN)分类的变体,以标识SRL的最近邻。我们表明,高质量的预测可以从非常少的相似实例中得出。在一项比较评估中,我们通过实验证明了基于实例的学习方法在域内和域外数据上均明显优于当前的最新系统,其F_1得分分别为89.28%和79.91%分别。

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