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Factoring Statutory Reasoning as Language Understanding Challenges

机译:作为语言理解挑战的法定推理

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Statutory reasoning is the task of determining whether a legal statute, stated in natural language, applies to the text description of a case. Prior work introduced a resource that approached statutory reasoning as a monolithic textual entailment problem, with neural baselines performing nearly at-chance. To address this challenge, we decompose statutory reasoning into four types of language-understanding challenge problems, through the introduction of concepts and structure found in Prolog programs. Augmenting an existing benchmark, we provide annotations for the four tasks, and baselines for three of them. Models for statutory reasoning are shown to benefit from the additional structure, improving on prior baselines. Further, the decomposition into subtasks facilitates finer-grained model diagnostics and clearer incremental progress.
机译:法定推理是确定在自然语言中规定的法律规约是否适用于案件的文本描述的任务。 事先工作推出了一种将法定推理的资源作为单片文本意外问题,神经基线表现几乎有机会。 为了解决这一挑战,我们通过引入Prolog计划中发现的概念和结构,将法定推理分解为四种语言理解挑战问题。 增强现有的基准,我们为三个任务提供注释,以及其中三个任务。 法定推理的模型被证明可以从额外的结构中受益,从而改善先前的基线。 此外,将分解成辅助促进更精细的模型诊断和更清晰的增量进度。

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