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Noise reduction and targeted exploration in imitation learning for Abstract Meaning Representation parsing

机译:抽象意义表示解析的模仿学习中的降噪和有针对性的探索

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Semantic parsers map natural language statements into meaning representations, and must abstract over syntactic phenomena, resolve anaphora, and identify word senses to eliminate ambiguous interpretations. Abstract meaning representation (AMR) is a recent example of one such semantic formalism which, similar to a dependency parse, utilizes a graph to represent relationships between concepts (Ba-narescu et al., 2013). As with dependency parsing, transition-based approaches are a common approach to this problem. However, when trained in the traditional manner these systems are susceptible to the accumulation of errors when they find undesirable states during greedy decoding. Imitation learning algorithms have been shown to help these systems recover from such errors. To effectively use these methods for AMR parsing we find it highly beneficial to introduce two novel extensions: noise reduction and targeted exploration. The former mitigates the noise in the feature representation, a result of the complexity of the task. The latter targets the exploration steps of imitation learning towards areas which are likely to provide the most information in the context of a large action-space. We achieve state-of-the art results, and improve upon standard transition-based parsing by 4.7 F_1 points.
机译:语义解析器将自然语言陈述映射为含义表示,并且必须抽象化句法现象,解决照应和识别词义以消除模棱两可的解释。抽象意义表示(AMR)是这种语义形式主义的最新示例,类似于依赖解析,它利用图形来表示概念之间的关系(Ba-narescu等,2013)。与依赖关系解析一样,基于过渡的方法是解决此问题的常用方法。然而,当以传统方式训练时,当这些系统在贪婪解码期间发现不期望的状态时,容易累积错误。模仿学习算法已被证明可以帮助这些系统从此类错误中恢复。为了有效地将这些方法用于AMR解析,我们发现引入两个新颖的扩展非常有用:降噪和定向探索。前者减轻了特征表示中的噪声,这是任务复杂性的结果。后者针对模仿学习的探索步骤,针对可能在大型行动空间内提供最多信息的领域。我们获得了最先进的结果,并且将基于标准过渡的解析提高了4.7 F_1点。

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