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Character-Level Models versus Morphology in Semantic Role Labeling

机译:字符角色模型与语义角色标记中的形态

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Character-level models have become a popular approach specially for their accessibility and ability to handle unseen data. However, little is known on their ability to reveal the underlying morphological structure of a word, which is a crucial skill for high-level semantic analysis tasks, such as semantic role labeling (SRL). In this work, we train various types of SRL models that use word, character and morphology level information and analyze how performance of characters compare to words and morphology for several languages. We conduct an in-depth error analysis for each morphological typology and analyze the strengths and limitations of character-level models that relate to out-of-domain data, training data size, long range dependencies and model complexity. Our exhaustive analyses shed light on important characteristics of character-level models and their semantic capability.
机译:字符级模型已经成为一种流行的方法,特别是由于它们的可访问性和处理看不见的数据的能力。但是,人们对它们揭示单词的潜在形态结构的能力知之甚少,这对于高级语义分析任务(例如语义角色标记(SRL))而言是一项至关重要的技能。在这项工作中,我们训练使用单词,字符和词法层级信息的各种类型的SRL模型,并分析字符的性能与几种语言的单词和词形相比较的方式。我们针对每种形态学类型进行深入的错误分析,并分析与域外数据,训练数据大小,远程依存关系和模型复杂性有关的字符级模型的优势和局限性。我们详尽的分析揭示了字符级模型的重要特征及其语义能力。

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