MEG: Multi-objective Ensemble Generation for Software Defect Prediction

Rebecca Moussa, Giovani Guizzo, Federica Sarro
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引用次数: 4

Abstract

Background: Defect Prediction research aims at assisting software engineers in the early identification of software defect during the development process. A variety of automated approaches, ranging from traditional classification models to more sophisticated learning approaches, have been explored to this end. Among these, recent studies have proposed the use of ensemble prediction models (i.e., aggregation of multiple base classifiers) to build more robust defect prediction models. Aims: In this paper, we introduce a novel approach based on multi-objective evolutionary search to automatically generate defect prediction ensembles. Our proposal is not only novel with respect to the more general area of evolutionary generation of ensembles, but it also advances the state-of-the-art in the use of ensemble in defect prediction. Method: We assess the effectiveness of our approach, dubbed as Multi-objectiveEnsembleGeneration (MEG), by empirically benchmarking it with respect to the most related proposals we found in the literature on defect prediction ensembles and on multi-objective evolutionary ensembles (which, to the best of our knowledge, had never been previously applied to tackle defect prediction). Result: Our results show that MEG is able to generate ensembles which produce similar or more accurate predictions than those achieved by all the other approaches considered in 73% of the cases (with favourable large effect sizes in 80% of them). Conclusions: MEG is not only able to generate ensembles that yield more accurate defect predictions with respect to the benchmarks considered, but it also does it automatically, thus relieving the engineers from the burden of manual design and experimentation.
MEG:软件缺陷预测的多目标集成生成
背景:缺陷预测研究的目的是帮助软件工程师在开发过程中早期识别软件缺陷。各种各样的自动化方法,从传统的分类模型到更复杂的学习方法,已经为此目的进行了探索。其中,最近的研究提出了使用集成预测模型(即多个基分类器的聚合)来构建更健壮的缺陷预测模型。目的:提出了一种基于多目标进化搜索的缺陷预测集成自动生成方法。我们的建议不仅在集成的进化生成的更一般的领域是新颖的,而且它也推进了集成在缺陷预测中使用的最新技术。方法:我们评估我们的方法的有效性,被称为多目标集成生成(MEG),通过对我们在缺陷预测集成和多目标进化集成的文献中发现的最相关的建议进行经验基准测试(据我们所知,以前从未应用于处理缺陷预测)。结果:我们的结果表明,在73%的情况下,MEG能够生成与所有其他方法所获得的预测相似或更准确的集成(其中80%具有有利的大效应量)。结论:MEG不仅能够生成与所考虑的基准相关的更准确的缺陷预测的集合,而且它还能自动地完成,从而减轻工程师手工设计和实验的负担。
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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