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Poster: ACONA: Active Online Model Adaptation for Predicting Continuous Integration Build Failures

机译:海报:ACONA:活动在线模型适应预测连续集成构建故障

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Continuous Integration (CI) reduces risk in software development, but a CI build usually brings huge time and resource consumption. Machine learning methods have been employed to cut the expenses of CI and provide instant feedback by predicting CI results. Nevertheless, effective learning requires massive training data which is not available for a new project. Moreover, due to the diversified characteristics of different projects, reusing models built on other projects leads to poor performance. To address this problem, we propose a novel active online model adaptation approach ACONA, which dynamically adapts a pool of classifiers trained on various projects to a new project using only a small fraction of new data it actively selects. With empirical study on Travis CI, we show that ACONA achieves an improvement of F-Measure by 40.0% while reducing Accumulated Error by 63.2% and the adapted model outperforms existing approaches.
机译:连续集成(CI)降低了软件开发的风险,但CI构建通常会带来大量的时间和资源消耗。已经采用机器学习方法来降低CI的费用,并通过预测CI结果提供即时反馈。尽管如此,有效的学习需要大量的培训数据,这是一个新项目。此外,由于不同项目的多样化特征,在其他项目上建立的重用模型会导致性能不佳。为了解决这个问题,我们提出了一种新的活动在线模型适应方法Acona,它动态地使用在各种项目上培训的分类器池,仅使用它积极选择的一小部分新数据。通过对Travis CI的实证研究,我们表明Acona实现了40.0 %的F-Degics的改善,同时减少了63.2 %的累计误差,并且适应的模型优于现有方法。

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