CATE: CAusality Tree Extractor from Natural Language Requirements

Noah Jadallah, Jannik Fischbach, Julian Frattini, Andreas Vogelsang
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引用次数: 1

Abstract

Causal relations (If A, then B) are prevalent in requirements artifacts. Automatically extracting causal relations from requirements holds great potential for various RE activities (e.g., automatic derivation of suitable test cases). However, we lack an approach capable of extracting causal relations from natural language with reasonable performance. In this paper, we present our tool CATE (CAusality Tree Extractor), which is able to parse the composition of a causal relation as a tree structure. CATE does not only provide an overview of causes and effects in a sentence, but also reveals their semantic coherence by translating the causal relation into a binary tree. We encourage fellow researchers and practitioners to use CATE at https://causalitytreeextractor.com/
CATE:自然语言需求的因果树提取器
因果关系(如果A,那么B)在需求工件中很普遍。从需求中自动提取因果关系为各种可重构活动提供了巨大的潜力(例如,自动派生合适的测试用例)。然而,我们缺乏一种能够从性能合理的自然语言中提取因果关系的方法。在本文中,我们提出了我们的工具CATE(因果关系树提取器),它能够将因果关系的组成解析为树结构。CATE不仅提供了句子因果关系的概览,而且通过将因果关系转化为二叉树来揭示其语义一致性。我们鼓励同行研究人员和从业人员在https://causalitytreeextractor.com/上使用CATE
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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