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Prediction of software development faults in PL/SQL files using neural network models

机译:使用神经网络模型预测PL / SQL文件中的软件开发故障

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摘要

Database application constitutes one of the largest and most important software domains in the world. Some classes or modules in such applications are responsible for database operations. Structured Query Language (SQL) is used to communicate with database middleware in these classes or modules. It can be issued interactively or embedded in a host language. This paper aims to predict the software development faults in PL/SQL files using SQL metrics. Based on actual project defect data, the SQL metrics are empirically validated by analyzing their relationship with the probability of fault detection across PL/SQL files. SQL metrics were extracted from Oracle PL/SQL code of a warehouse management database application system. The faults were collected from the journal files that contain the documentation of all changes in source files. The result demonstrates that these measures may be useful in predicting the fault concerning with database accesses. In our study, General Regression Neural Network and Ward Neural Network are used to evaluate the capability of this set of SQL metrics in predicting the number of faults in database applications.
机译:数据库应用程序构成了世界上最大,最重要的软件领域之一。此类应用程序中的某些类或模块负责数据库操作。结构化查询语言(SQL)用于与这些类或模块中的数据库中间件进行通信。它可以以交互方式发布或以宿主语言嵌入。本文旨在使用SQL指标预测PL / SQL文件中的软件开发错误。根据实际项目缺陷数据,通过分析它们与PL / SQL文件中故障检测概率的关系,对SQL度量进行经验验证。 SQL度量是从仓库管理数据库应用程序系统的Oracle PL / SQL代码中提取的。从包含源文件中所有更改文档的日志文件中收集故障。结果表明,这些措施可能有助于预测与数据库访问有关的故障。在我们的研究中,使用通用回归神经网络和Ward神经网络来评估这组SQL指标在预测数据库应用程序中的故障数量方面的能力。

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