Nearest neighbor sampling for cross company defect predictors: abstract only

Burak Turhan, A. Bener, T. Menzies
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引用次数: 10

Abstract

Several research in defect prediction focus on building models with available local data (i.e. within company predictors). To employ these models, a company should have a data repository, where project metrics and defect information from past projects are stored. However, few companies apply this practice. In a recent work, we have shown that cross company data can be used for building predictors with the cost of increased false alarms. Thus, we argued that the practical application of cross-company predictors is limited to mission critical projects and companies should starve for local data. In this paper, we show that nearest neighbor (NN) sampling of cross-company data removes the increased false alarm rates. We conclude that cross company defect predictors can be practical tools with NN sampling, yet local predictors are still the best and companies should keep starving for local data.
跨公司缺陷预测的最近邻抽样:只是抽象的
在缺陷预测方面的一些研究集中在用可用的本地数据(即公司内部预测器)构建模型上。要使用这些模型,公司应该有一个数据存储库,其中存储了来自过去项目的项目度量标准和缺陷信息。然而,很少有公司采用这种做法。在最近的一项工作中,我们已经表明,跨公司的数据可以用于构建预测器,其代价是增加误报。因此,我们认为跨公司预测器的实际应用仅限于关键任务项目,公司应该迫切需要本地数据。在本文中,我们证明了跨公司数据的最近邻(NN)采样可以消除增加的虚警率。我们得出结论,跨公司缺陷预测器可以作为NN采样的实用工具,但局部预测器仍然是最好的,公司应该继续渴望本地数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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