解释特征模型中的异常

M. Kowal, Sofia Ananieva, Thomas Thüm
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引用次数: 64

摘要

一般来说,可变软件的开发,特别是特征模型的开发,是一项容易出错且耗时的任务。对于包含数百或数千个特征和约束的工业规模模型,它变得越来越具有挑战性。每次更改都可能导致特征模型中的异常,例如使某些特征无法选择。虽然异常的探测已经得到了充分的研究,但给出解释仍然是一个挑战。解释必须尽可能准确和易于理解,以支持开发人员修复错误的来源。我们提出了一种有效的通用算法来解释特征模型中的不同异常。此外,我们通过计算以用户友好的方式表达的简短解释,并通过强调解释中更可能是异常原因的特定部分,为开发人员带来了好处。我们在FeatureIDE中提供了一个开源实现,并展示了它对工业规模特征模型的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explaining anomalies in feature models
The development of variable software, in general, and feature models, in particular, is an error-prone and time-consuming task. It gets increasingly more challenging with industrial-size models containing hundreds or thousands of features and constraints. Each change may lead to anomalies in the feature model such as making some features impossible to select. While the detection of anomalies is well-researched, giving explanations is still a challenge. Explanations must be as accurate and understandable as possible to support the developer in repairing the source of an error. We propose an efficient and generic algorithm for explaining different anomalies in feature models. Additionally, we achieve a benefit for the developer by computing short explanations expressed in a user-friendly manner and by emphasizing specific parts in explanations that are more likely to be the cause of an anomaly. We provide an open-source implementation in FeatureIDE and show its scalability for industrial-size feature models.
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