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Antecedents of open source software defects: A data mining approach to model formulation, validation and testing

机译:开源软件缺陷的先决条件:一种用于模型制定,验证和测试的数据挖掘方法

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This paper develops tests and validates a model for the antecedents of open source software (OSS) defects, using Data and Text Mining. The public archives of OSS projects are used to access historical data on over 5,000 active and mature OSS projects. Using domain knowledge and exploratory analysis, a wide range of variables is identified from the process, product, resource, and end-user characteristics of a project to ensure that the model is robust and considers all aspects of the system. Multiple Data Mining techniques are used to refine the model and data is enriched by the use of Text Mining for knowledge discovery from qualitative information. The study demonstrates the suitability of Data Mining and Text Mining for model building. Results indicate that project type, end-user activity, process quality, team size and project popularity have a significant impact on the defect density of operational OSS projects. Since many organizations, both for profit and not for profit, are beginning to use Open Source Software as an economic alternative to commercial software, these results can be used in the process of deciding what software can be reasonably maintained by an organization.
机译:本文使用数据和文本挖掘技术开发了测试并验证了开放源代码软件(OSS)缺陷的前因模型。 OSS项目的公共档案用于访问5,000多个活跃和成熟的OSS项目的历史数据。使用领域知识和探索性分析,可以从项目的过程,产品,资源和最终用户特征中识别出广泛的变量,以确保模型的健壮性并考虑到系统的各个方面。多种数据挖掘技术被用于完善模型,并且通过使用文本挖掘从定性信息中发现知识来丰富数据。该研究证明了数据挖掘和文本挖掘对模型构建的适用性。结果表明,项目类型,最终用户活动,流程质量,团队规模和项目知名度对运营OSS项目的缺陷密度有重大影响。由于许多组织(无论是牟利还是非牟利组织)都开始将开源软件用作商业软件的经济替代品,因此这些结果可用于确定组织可以合理维护哪些软件的过程。

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