结合软件质量预测模型:一种进化的方法

S. Bouktif, H. Sahraoui, B. Kégl
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引用次数: 20

摘要

在过去的十年中,文献中提出了大量的质量模型。一般来说,这些模型的目标是从一组直接度量开始预测质量因素。由于这些模型背后缺乏数据,因此很难泛化、交叉验证和重用现有模型。因此,对于一个公司来说,选择一个合适的质量模型是一个困难的、重要的决定。在本文中,我们提出了这个问题的一般方法和一个特殊的解决方案。其主要思想是以这样一种方式组合和调整现有的模型(专家),即组合模型在特定系统或特定类型的组织中良好地工作。在我们的特解中,专家被假设为决策树或基于规则的分类器,并通过遗传算法进行组合。结果是一个白盒模型:对于每个软件组件,该模型不仅给出了软件质量因子的预测,而且还提供了用于获得预测的专家。测试结果表明,该模型的性能明显优于单个专家。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining software quality predictive models: an evolutionary approach
During the last ten years, a large number of quality models have been proposed in the literature. In general, the goal of these models is to predict a quality factor starting from a set of direct measures. The lack of data behind these models makes it hard to generalize, cross-validate, and reuse existing models. As a consequence, for a company, selecting an appropriate quality model is a difficult, non-trivial decision. In this paper, we propose a general approach and a particular solution to this problem. The main idea is to combine and adapt existing models (experts) in such a way that the combined model works well on the particular system or in the particular type of organization. In our particular solution, the experts are assumed to be decision tree or rule-based classifiers and the combination is done by a genetic algorithm. The result is a white-box model: for each software component, not only does the model give a prediction of the software quality factor, it also provides the expert that was used to obtain the prediction. Test results indicate that the proposed model performs significantly better than individual experts in the pool.
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