基于句子转换模型的需求规范和用例描述语义文本相似度研究

Meizan Arthur Alfianto, Y. Priyadi, K. A. Laksitowening
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引用次数: 0

摘要

用例描述(UCD)和功能需求(FR)之间的兼容性对于软件的成功开发至关重要。然而,如果UCD不能准确地反映FR中指定的预期功能,则可能会出现差异。本文使用句子转换模型来评估UCD和FR之间的对齐,两者都是用自然语言编写的。该研究的目的是找出统一句子描述中潜在的差异和歧义,并提出修改建议,以使其更好地与句子表对应。句子转换模型通过分析语义相似度来量化统一句子描述和句子表之间的对齐程度。根据研究结果,对UCD的修改,如精炼术语、阐明定义和纠正书写错误,可以大大提高与FR的语义相似度。Pearson相关系数为0.70,表明预测结果与语义相似度的基本事实之间的相关性为线性正相关。Spearman秩相关系数值为0.715,表明两种文本类型之间存在正单调关系,保持语义相似度的秩。均方误差(MSE)值为0.024,表明该模型对语义相似度的预测精度较高。
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Semantic Textual Similarity in Requirement Specification and Use Case Description based on Sentence Transformer Model
The compatibility between the Use Case Description (UCD) and the Functional Requirements (FR) is essential for the successful development of software. Nevertheless, discrepancies may occur if the UCD does not precisely reflect the intended functionalities specified in the FR. This paper uses a Sentence Transformer Model to evaluate the alignment between the UCD and FR, both written in natural language. The study aims to identify potential discrepancies and ambiguities in the UCD and suggest modifications to better their correspondence with the FR. The Sentence Transformer Model quantifies the degree of alignment between the UCD and FR by analyzing semantic similarity. According to the findings, modifications to the UCD, such as refining terminology, elucidating definitions, and correcting writing errors, can substantially increase semantic similarity with the FR. The Pearson correlation coefficient of 0.70 indicates the correlation between the predicted and the ground truth of semantic similarity is linearly positive. The Spearman rank correlation coefficient value of 0.715 suggests a positive monotonic relationship, with the two text types maintaining their rank of semantic similarity. The low mean squared error (MSE) value of 0.024 demonstrates the model’s predictive accuracy for semantic similarity.
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