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A semantic relatedness approach for traceability link recovery

机译:追溯链接恢复的语义相关性方法

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摘要

Human analysts working with automated tracing tools need to directly vet candidate traceability links in order to determine the true traceability information. Currently, human intervention happens at the end of the traceability process, after candidate traceability links have already been generated. This often leads to a decline in the results' accuracy. In this paper, we propose an approach, based on semantic relatedness (SR), which brings human judgment to an earlier stage of the tracing process by integrating it into the underlying retrieval mechanism. SR tries to mimic human mental model of relevance by considering a broad range of semantic relations, hence producing more semantically meaningful results. We evaluated our approach using three datasets from different application domains, and assessed the tracing results via six different performance measures concerning both result quality and browsability. The empirical evaluation results show that our SR approach achieves a significantly better performance in recovering true links than a standard Vector Space Model (VSM) in all datasets. Our approach also achieves a significantly better precision than Latent Semantic Indexing (LSI) in two of our datasets.
机译:使用自动跟踪工具的人类分析人员需要直接审查候选可跟踪性链接,以确定真正的可跟踪性信息。当前,在已生成候选可追溯性链接之后,人为干预发生在可追溯性过程的末尾。这通常会导致结果准确性下降。在本文中,我们提出了一种基于语义相关性(SR)的方法,该方法通过将人的判断集成到底层检索机制中,从而将人的判断带入了跟踪过程的早期阶段。 SR试图通过考虑广泛的语义关系来模仿人类的心理模型,从而产生更具语义意义的结果。我们使用来自不同应用程序域的三个数据集评估了我们的方法,并通过关于结果质量和可浏览性的六种不同性能指标评估了跟踪结果。经验评估结果表明,在所有数据集中,我们的SR方法在恢复真实链接方面均比标准向量空间模型(VSM)显着提高了性能。与我们的两个数据集中的潜在语义索引(LSI)相比,我们的方法还实现了明显更高的精度。

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