Numerical Signatures of Antipatterns: An Approach Based on B-Splines

R. Oliveto, Foutse Khomh, G. Antoniol, Yann-Gaël Guéhéneuc
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引用次数: 69

Abstract

Antipatterns are poor object-oriented solutions to recurring design problems. The identification of occurrences of antipatterns in systems has received recently some attention but current approaches have two main limitations: either (1) they classify classes strictly as being or not antipatterns, and thus cannot report accurate information for borderline classes, or (2) they return the probabilities of classes to be antipatterns but they require an expensive tuning by experts to have acceptable accuracy. To mitigate such limitations, we introduce a new identification approach, ABS (Antipattern identification using B-Splines), based on a numerical analysis technique. The results of a preliminary study show that ABS generally outperforms previous approaches in terms of accuracy when used to identify Blobs.
反模式的数值签名:基于b样条的方法
反模式是反复出现的设计问题的糟糕的面向对象解决方案。识别系统中出现的反模式最近受到了一些关注,但目前的方法有两个主要的限制:要么(1)它们严格地将类分类为反模式或非反模式,因此不能报告边缘类的准确信息,要么(2)它们返回类为反模式的概率,但它们需要专家进行昂贵的调优才能获得可接受的准确性。为了减轻这些限制,我们引入了一种新的识别方法,ABS(使用b样条的反模式识别),基于数值分析技术。初步研究的结果表明,ABS通常优于以前的方法在准确性方面,当用于识别Blobs。
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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