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Norm Conflict Identification Using Deep Learning

机译:使用深度学习识别规范冲突

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摘要

Contracts represent agreements between two or more parties formally in the form of deontic statements or norms within their clauses. If not carefully designed, such conflicts may invalidate an entire contract, and thus human reviewers invest great effort to write conflict-free contracts that, for complex and long contracts, can be time consuming and error-prone. In this work, we develop an approach to automate the identification of potential conflicts between norms in contracts. We build a two-phase approach that uses traditional machine learning together with deep learning to extract and compare norms in order to identify conflicts between them. Using a manually annotated set of conflicts as train and test set, our approach obtains 85% accuracy, establishing a new state-of-the art.
机译:合同正式表示两个或多个当事方之间的协议,形式是其条款中的明确声明或规范。如果设计不当,此类冲突可能会使整个合同无效,因此,人工审核者会花费大量精力来编写无冲突的合同,对于复杂而长期的合同,这可能既费时又容易出错。在这项工作中,我们开发了一种自动识别合同规范之间潜在冲突的方法。我们建立了一个两阶段的方法,该方法将传统的机器学习与深度学习一起使用以提取和比较规范,以识别它们之间的冲突。使用手动注释的一组冲突作为训练和测试集,我们的方法获得了85%的准确性,建立了新的技术水平。

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