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On effects of tokens in source code to accuracy of fault-prone module prediction

机译:令牌在源代码中的效果对故障易于模块预测的准确性

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In the software development, defects affect quality and cost in an adverse way. Therefore, various studies have been proposed defect prediction techniques. Most of current defect prediction approaches use past project data for building prediction models. That is, these approaches are difficult to apply new development projects without past data. In this study, we use 28 versions of 8 projects to conduct experiments using the fault-prone filtering technique. Fault-prone filtering is a method that predicts faults using tokens from source code modules. Since the classes of tokens have impact to the accuracy of fault-proneness, we conduct an experiment to find appropriate token sets for prediction. From the results of experiments, we found that using tokens extracted from all parts of modules is the best way to predict faults and using tokens extracted from code part of modules shows better precision.
机译:在软件开发中,缺陷会影响质量和成本的不利方式。因此,已经提出了各种研究缺陷预测技术。当前的大多数缺陷预测方法使用过去的项目数据来构建预测模型。也就是说,这些方法很难在没有过去数据的情况下应用新的开发项目。在这项研究中,我们使用28个版本的8个项目进行使用故障易受过滤技术进行实验。容易过滤的是一种方法,可以使用来自源代码模块的令牌的故障。由于令牌的类对故障透明的准确性影响,因此我们进行实验以找到适当的预测令牌集。从实验结果中,我们发现,使用从模块的所有部分提取的令牌是预测故障的最佳方法,并使用从模块的代码部分提取的令牌显示更好的精度。

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