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Extending Nocuous Ambiguity Analysis for Anaphora in Natural Language Requirements

机译:在自然语言要求中延长了神圣视症的一部食芯模糊分析

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This paper presents an approach to automatically identify potentially nocuous ambiguities, which occur when text is interpreted differently by different readers of requirements written in natural language. We extract a set of anaphora ambiguities from a range of requirements documents, and collect multiple human judgments on their interpretations. The judgment distribution is used to determine if an ambiguity is nocuous or innocuous. We investigate a number of antecedent preference heuristics that we use to explore aspects of anaphora which may lead a reader to favour a particular interpretation. Using machine learning techniques, we build an automated tool to predict the antecedent preference of noun phrase candidates, which in turn is used to identify nocuous ambiguity. We report on a series of experiments that we conducted to evaluate the performance of our automated system. The results show that the system achieves high recall with a consistent improvement on baseline precision subject to some ambiguity tolerance levels, allowing us to explore and highlight realistic and potentially problematic ambiguities in actual requirements documents.
机译:本文介绍了一种自动识别潜在虐待歧义的方法,当文本被自然语言编写的不同要求的不同读者解释不同的文本时发生。我们从一系列要求文件中提取一组视力歧视,并在其解释中收集多项人类判断。判断分布用于确定歧义是否是无穷的或无害的。我们调查我们用于探索华侨人的方面的许多前进的偏好启发式,这可能导致读者倾向于特定的解释。使用机器学习技术,我们构建一个自动工具,以预测名词短语候选者的前一种偏好,这反过来用于识别丰富的歧义。我们报告了一系列实验,我们进行了评估我们自动化系统的表现。结果表明,该系统达到了高回忆,并在基线精度受到一些模糊性容差水平的一致改进,允许我们在实际要求文件中探索和突出现实和潜在的有问题的歧义。

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