利用主成分分析和基于搜索的度量选择增强预测模型:一项比较研究

R. Vivanco, Dean Jin
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引用次数: 7

摘要

预测模型用于检测降低产品质量的潜在问题组件。源代码度量可以用作预测模型中的输入特征;然而,存在许多捕获大小、耦合、内聚、继承和复杂性的不同方面的结构度量。需要回答的一个重要问题是,哪些指标应该与预测器一起使用。对度量选择策略(主成分分析、遗传算法和CK度量集)进行了比较分析。最初的结果表明,基于搜索的度量选择在识别具有高认知复杂性的Java类(降低了产品维护)方面提供了最佳的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing predictive models using principal component analysis and search based metric selection: a comparative study
Predictive models are used for the detection of potentially problematic component that decrease product quality. Source code metrics can be used as input features in predictive models; however, there exist numerous structural measures that capture different aspects of size, coupling, cohesion, inheritance and complexity. An important question to answer is which metrics should be used with a predictor. A comparative analysis of metric selection strategies (principal component analysis, a genetic algorithm and the CK metrics set) has been carried out. Initial results indicate that search-based metric selection gives the best predictive performance in identifying Java classes with high cognitive complexity that degrades product maintenance.
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