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Exploring Machine Learning Techniques for Software Size Estimation

机译:探索软件规模估计的机器学习技术

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Prediction models are fundamental in the early stages of the software development when many times, decisions must be taken without the required information. A typical information that is not available in these stages is software size metrics, such as lines of code (LOC). Models for LOC estimation are obtained from historical data and statistical regression methods are usually applied. These characteristics make this estimation problem especially interesting for the application of machine learning techniques. To explore this fact, this work applies Genetic Programming and Neural Networks techniques for LOC estimation. Two different data sets were used to obtain two models using respectively the metrics function points and number of components. The models are analysed and the machine learning techniques are compared.
机译:预测模型是软件开发的早期阶段的基础,必须在没有所需信息的情况下进行决策。这些阶段中不可用的典型信息是软件大小指标,例如代码行(LOC)。 LOC估计的模型是从历史数据获得的,并且通常应用统计回归方法。这些特性使得该估计问题对机器学习技术的应用尤其有趣。为了探索这一事实,这项工作适用于基因估计的遗传编程和神经网络技术。使用两个不同的数据集用于分别使用度量函数点和组件数来获取两个模型。分析了模型,并比较了机器学习技术。

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