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The effectiveness of hidden dependence metrics in bug prediction - online appendix

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DataCite Commons2024-03-06 更新2025-04-16 收录
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https://ieee-dataport.org/documents/effectiveness-hidden-dependence-metrics-bug-prediction-online-appendix
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This dataset contains the online appendix of the paper titled "The effectiveness of hidden dependence metrics in bug prediction"Abstract: Finding and fixing bugs in programs is perhaps one of the most difficult, yet most important, tasks in software maintenance. This is why in the last decades, a lot of work has been done on this topic, most of which is based on machine learning methods. Studies on bug prediction can be found for almost all programming languages. The solutions presented generally try to predict bugs based on information that can be easily extracted from the source code, rather than more expensive solutions that require a deeper understanding of the program. Another feature of these solutions is that they usually try to predict faults at a high level (module/file/class), which is useful, but locating the bug itself is still a difficult task.In this work, we present a solution that attempts to predict bugs at the method level, while also tracking the dependencies in the program using an efficient algorithm, resulting in an approach that can predict bugs more accurately. Our practical measurements show that our defined approach really outperforms predictions based on traditional metrics in most cases, and with proper filtering, we can even achieve an 11% improvement in the case of the best-performing RandomForest algorithm according to F-measure. Finally, we also prove that the introduced metrics are even suitable for predicting bugs that will appear later in a given project if sufficient learning data is available.
提供机构:
IEEE DataPort
创建时间:
2024-03-06
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